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import sys
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sys.path.append('/opt/nvidia/deepstream/deepstream/sources/deepstream_python_apps/apps')
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import os
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import gi
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gi.require_version('Gst', '1.0')
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from gi.repository import GLib, Gst
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from common.platform_info import PlatformInfo
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from common.bus_call import bus_call
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import numpy as np
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import ctypes
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import pyds
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from functools import partial
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from CommonCode.settings import get_logger, LogColorize
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import argparse
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pfm = LogColorize.watch_and_fix_permissions
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logger = get_logger(__name__,'/var/log/ml_vision_logs/00_watch_and_fix_permissions', stdout=True, systemd=False)
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target_width = 1280
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target_height = 720
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os.environ.pop("DISPLAY",None)
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MUXER_BATCH_TIMEOUT_USEC = 1000000
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def embedder_results_probe(pad,info,u_data, list_add, frame_num = 0):
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gst_buffer = info.get_buffer()
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if not gst_buffer:
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print("Unable to get GstBuffer ")
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return
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batch_meta = pyds.gst_buffer_get_nvds_batch_meta(hash(gst_buffer))
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l_frame = batch_meta.frame_meta_list
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while l_frame is not None:
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try:
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# Note that l_frame.data needs a cast to pyds.NvDsFrameMeta
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# The casting also keeps ownership of the underlying memory
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# in the C code, so the Python garbage collector will leave
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# it alone.
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frame_meta = pyds.NvDsFrameMeta.cast(l_frame.data)
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except StopIteration:
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break
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frame_number=frame_meta.frame_num
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l_user = frame_meta.frame_user_meta_list
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while l_user is not None:
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try:
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# Note that l_user.data needs a cast to pyds.NvDsUserMeta
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# The casting also keeps ownership of the underlying memory
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# in the C code, so the Python garbage collector will leave
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# it alone.
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user_meta = pyds.NvDsUserMeta.cast(l_user.data)
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except StopIteration:
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break
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if (
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user_meta.base_meta.meta_type
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!= pyds.NvDsMetaType.NVDSINFER_TENSOR_OUTPUT_META
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):
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continue
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tensor_meta = pyds.NvDsInferTensorMeta.cast(user_meta.user_meta_data)
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# Boxes in the tensor meta should be in network resolution which is
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# found in tensor_meta.network_info. Use this info to scale boxes to
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# the input frame resolution.
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layers_info = []
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if True:
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for i in range(tensor_meta.num_output_layers):
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layer = pyds.get_nvds_LayerInfo(tensor_meta, i)
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if layer.layerName=='output0':
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ptr = ctypes.cast(pyds.get_ptr(layer.buffer), ctypes.POINTER(ctypes.c_float))
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num_elements = layer.inferDims.numElements
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v = list(np.ctypeslib.as_array(ptr, shape=(num_elements,)))
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v = [float(x) for x in v]
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list_add.append({'frame_number':frame_number, 'vector':v})
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try:
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l_user = l_user.next
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except StopIteration:
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break
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try:
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# indicate inference is performed on the frame
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frame_meta.bInferDone = True
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l_frame = l_frame.next
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except StopIteration:
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break
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return Gst.PadProbeReturn.OK
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def detector_results_probe(pad,info,u_data, list_add, frame_num = 0):
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frame_number=0
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num_rects=0
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got_fps = False
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gst_buffer = info.get_buffer()
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if not gst_buffer:
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print("Unable to get GstBuffer ")
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return
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batch_meta = pyds.gst_buffer_get_nvds_batch_meta(hash(gst_buffer))
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l_frame = batch_meta.frame_meta_list
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while l_frame is not None:
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try:
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frame_meta = pyds.NvDsFrameMeta.cast(l_frame.data)
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except StopIteration:
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break
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frame_number=frame_meta.frame_num
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l_obj=frame_meta.obj_meta_list
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num_rects = frame_meta.num_obj_meta
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l_user = frame_meta.frame_user_meta_list
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while l_obj is not None:
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try:
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# Casting l_obj.data to pyds.NvDsObjectMeta
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obj_meta=pyds.NvDsObjectMeta.cast(l_obj.data)
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except StopIteration:
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break
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# param_extract = ['left','top','width','height']
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# strc = ''
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# for param in param_extract:
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# strc+=str(getattr(obj_meta.rect_params, param))
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# strc+=' '
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# target_width
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# target_height
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score = obj_meta.confidence
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label = obj_meta.obj_label
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left = obj_meta.rect_params.left
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top = obj_meta.rect_params.top
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width = obj_meta.rect_params.width
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height = obj_meta.rect_params.height
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frame_number = frame_number
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class_id = obj_meta.class_id
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d_add = {'score':score, 'label':label, 'left':left, 'top':top, 'width':width, 'height':height, 'frame_number':frame_number, 'class_id': class_id}
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list_add.append(d_add)
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if frame_number % 100 == 0:
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str_pr = 'FRAME_PROGRESS: '+pfm(str(frame_number) + '/' + str(frame_num))
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logger.info(str_pr)
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try:
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l_obj=l_obj.next
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except StopIteration:
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break
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# Update frame rate through this probe
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stream_index = "stream{0}".format(frame_meta.pad_index)
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try:
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l_frame=l_frame.next
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except StopIteration:
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break
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return Gst.PadProbeReturn.OK
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def cb_newpad(decodebin, decoder_src_pad,data):
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print("In cb_newpad\n")
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caps=decoder_src_pad.get_current_caps()
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if not caps:
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caps = decoder_src_pad.query_caps()
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gststruct=caps.get_structure(0)
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gstname=gststruct.get_name()
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source_bin=data
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features=caps.get_features(0)
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# Need to check if the pad created by the decodebin is for video and not
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# audio.
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print("gstname=",gstname)
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if(gstname.find("video")!=-1):
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# Link the decodebin pad only if decodebin has picked nvidia
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# decoder plugin nvdec_*. We do this by checking if the pad caps contain
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# NVMM memory features.
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print("features=",features)
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if features.contains("memory:NVMM"):
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# Get the source bin ghost pad
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bin_ghost_pad=source_bin.get_static_pad("src")
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if not bin_ghost_pad.set_target(decoder_src_pad):
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sys.stderr.write("Failed to link decoder src pad to source bin ghost pad\n")
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else:
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sys.stderr.write(" Error: Decodebin did not pick nvidia decoder plugin.\n")
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def decodebin_child_added(child_proxy,Object,name,user_data):
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print("Decodebin child added:", name, "\n")
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if(name.find("decodebin") != -1):
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Object.connect("child-added",decodebin_child_added,user_data)
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if "source" in name:
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source_element = child_proxy.get_by_name("source")
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if source_element.find_property('drop-on-latency') != None:
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Object.set_property("drop-on-latency", True)
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def create_source_bin(uri):
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print("Creating source bin")
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# Create a source GstBin to abstract this bin's content from the rest of the
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# pipeline
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bin_name="source-bin-any-format"
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print(bin_name)
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nbin=Gst.Bin.new(bin_name)
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if not nbin:
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sys.stderr.write(" Unable to create source bin \n")
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# Source element for reading from the uri.
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# We will use decodebin and let it figure out the container format of the
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# stream and the codec and plug the appropriate demux and decode plugins.
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uri_decode_bin=Gst.ElementFactory.make("uridecodebin", "uri-decode-bin")
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if not uri_decode_bin:
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sys.stderr.write(" Unable to create uri decode bin \n")
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# We set the input uri to the source element
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uri_decode_bin.set_property("uri",uri)
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# Connect to the "pad-added" signal of the decodebin which generates a
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# callback once a new pad for raw data has beed created by the decodebin
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uri_decode_bin.connect("pad-added",cb_newpad,nbin)
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uri_decode_bin.connect("child-added",decodebin_child_added,nbin)
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# We need to create a ghost pad for the source bin which will act as a proxy
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# for the video decoder src pad. The ghost pad will not have a target right
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# now. Once the decode bin creates the video decoder and generates the
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# cb_newpad callback, we will set the ghost pad target to the video decoder
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# src pad.
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Gst.Bin.add(nbin,uri_decode_bin)
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bin_pad=nbin.add_pad(Gst.GhostPad.new_no_target("src",Gst.PadDirection.SRC))
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if not bin_pad:
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sys.stderr.write(" Failed to add ghost pad in source bin \n")
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return None
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return nbin
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def run_inference(file_path):
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os.environ.pop("DISPLAY",None)
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if not file_path.startswith('file://'):
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file_path = 'file://'+file_path
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platform_info = PlatformInfo()
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Gst.init(None)
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pipeline = Gst.Pipeline()
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streammux = Gst.ElementFactory.make("nvstreammux", "Stream-muxer")
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nugget_detector = Gst.ElementFactory.make("nvinfer", "primary-inference")
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nugget_embedder = Gst.ElementFactory.make("nvinfer", "secondary-inference")
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streammux.set_property('width', target_width)
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streammux.set_property('height', target_height)
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streammux.set_property('batched-push-timeout', MUXER_BATCH_TIMEOUT_USEC)
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streammux.set_property('enable-padding',1)
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streammux.set_property('batch-size', 1)
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nugget_detector.set_property('config-file-path', "/home/thebears/DeepStream-Yolo/detector.txt")
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nugget_embedder.set_property('config-file-path', "/home/thebears/DeepStream-Yolo/embedder.txt")
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fakesink1 = Gst.ElementFactory.make("fakesink","fakesink")
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fakesink1.set_property('enable-last-sample', 0)
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fakesink1.set_property('sync', 1)
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pipeline.add(fakesink1)
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fakesink2 = Gst.ElementFactory.make("fakesink","fakesink2")
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fakesink2.set_property('enable-last-sample', 0)
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fakesink2.set_property('sync', 1)
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pipeline.add(fakesink2)
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pipeline.add(streammux)
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pipeline.add(nugget_detector)
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pipeline.add(nugget_embedder)
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# uri_name = 'file:///home/thebears/railing.mp4'
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# uri_name = 'file:///home/thebears/railing_00_20250213094806.mp4'
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source_file=create_source_bin(file_path)
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pipeline.add(source_file)
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stream_pad = streammux.request_pad_simple("sink_0")
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source_pad = source_file.get_static_pad("src")
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source_pad.link(stream_pad)
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tee=Gst.ElementFactory.make("tee", "nvsink-tee")
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pipeline.add(tee)
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queue1=Gst.ElementFactory.make("queue", "nvtee-que1")
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queue2=Gst.ElementFactory.make("queue", "nvtee-que2")
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pipeline.add(queue1)
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pipeline.add(queue2)
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streammux.link(tee)
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tee.link(queue1)
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tee.link(queue2)
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queue1.link(nugget_detector)
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queue2.link(nugget_embedder)
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cmd = f'/usr/bin/ffprobe -v error -select_streams v:0 -count_packets -show_entries stream=nb_read_packets -of csv=p=0 {file_path}'#/srv/ftp/railing/2025/02/28/railing_00_20250228115800.mp4
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try:
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frames = int(os.popen(cmd).read().strip())
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except:
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frames = 0
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logger.info(f"TOTAL_FRAMES: {frames}")
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embedder_list = list()
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embedder_results = partial(embedder_results_probe, list_add=embedder_list, frame_num = frames)
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nugget_embedder.get_static_pad("src").add_probe(Gst.PadProbeType.BUFFER, embedder_results, 0)
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detector_list = list()
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detector_results = partial(detector_results_probe, list_add = detector_list, frame_num = frames)
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nugget_detector.get_static_pad("src").add_probe(Gst.PadProbeType.BUFFER, detector_results, 0)
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nugget_detector.link(fakesink1)
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nugget_embedder.link(fakesink2)
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# create an event loop and feed gstreamer bus mesages to it
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loop = GLib.MainLoop()
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bus = pipeline.get_bus()
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bus.add_signal_watch()
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bus.connect ("message", bus_call, loop)
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# start play back and listen to events
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print("Starting pipeline \n")
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pipeline.set_state(Gst.State.PLAYING)
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try:
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loop.run()
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except:
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pass
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# cleanup
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pipeline.set_state(Gst.State.NULL)
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return detector_list, embedder_list
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if __name__ == '__main__':
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sys.exit(run_inference(sys.argv[1]))
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@@ -0,0 +1,5 @@
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import time
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while True:
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print("Hello from Orin")
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time.sleep(0.25)
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@@ -0,0 +1,36 @@
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from kafka import TopicPartition
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from kafka.structs import OffsetAndMetadata
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from CommonCode import kwq
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input_topic = kwq.TOPICS.videos_to_score_detection
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producer = kwq.producer
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topic_produce = kwq.TOPICS.videos_scored_detection
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client_id = 'hello_world2'
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group_id = client_id
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consumer = kwq.create_consumer(input_topic, group_id = group_id, client_id = client_id)
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c_part = TopicPartition(input_topic, 0)
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consumer.assign([c_part])
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c_committed = consumer.committed(c_part)
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logger.info(f"KAFKA_POSITION_IS: {str(consumer.position(c_part))}")
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if c_committed is None:
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logger.info(f"KAFKA_POSITION_NOT_COMMITTED")
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else:
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logger.info(f"KAFKA_POSITION_COMMITTED_IS: {c_committed}")
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consumer.seek(c_part, c_committed)
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logger.info("START POLLING")
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# %%
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for c in consumer:
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print(c.offset)
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+1048
File diff suppressed because it is too large
Load Diff
BIN
Binary file not shown.
+5165
File diff suppressed because it is too large
Load Diff
@@ -0,0 +1,168 @@
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from CommonCode import kwq
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import time
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import json
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import logging
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import os
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from CommonCode.settings import get_logger, LogColorize
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from kafka import TopicPartition
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from kafka.structs import OffsetAndMetadata
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pfm = LogColorize.score_obj_det_orin
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logger = get_logger(__name__,'/var/log/ml_vision_logs/01_score_obj_det_orin', stdout=True, systemd=False)
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os.system("sudo /usr/bin/systemctl restart --now systemd-journal-upload.service")
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logger.info(pfm(f"Starting wait_for_new_messages.py on orin for scoring object detection"))
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input_topic = kwq.TOPICS.videos_to_score_detection
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producer = kwq.producer
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topic_produce = kwq.TOPICS.videos_scored_detection
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client_id = 'obj_detector_orin_3'
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group_id = client_id
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# %%
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||||
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||||
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import json
|
||||
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logger.debug("Starting Kafka Consumer")
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from deepstream_obj_det import run_inference, target_width, target_height
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import os
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os.environ.pop("DISPLAY",None)
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def run_inference_for_file(file_path):
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start_time = time.time()
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||||
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end_time = time.time()
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pre_path, _ = os.path.splitext(file_path)
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det_path = pre_path + '.json.orin'
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emb_path = pre_path + '.oclip.orin'
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if os.path.exists(det_path) and os.path.exists(emb_path):
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return "Already scored"
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||||
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||||
if not os.path.exists(file_path):
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||||
return "Movie does not exist"
|
||||
|
||||
# %%
|
||||
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||||
cmd = f'/usr/bin/ffprobe -v error -select_streams v:0 -count_packets -show_entries stream=nb_read_packets -of csv=p=0 {file_path}'#/srv/ftp/railing/2025/02/28/railing_00_20250228115800.mp4
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||||
try:
|
||||
frames = int(os.popen(cmd).read().strip())
|
||||
except:
|
||||
frames = 0
|
||||
|
||||
logger.info(f"TOTAL_FRAMES: {frames}")
|
||||
if frames < 30:
|
||||
logger.info(f"TOTAL_FRAMES_SKIPPING: {file_path}")
|
||||
return "FAILED, NOT ENOUGH FRAMES"
|
||||
|
||||
while True:
|
||||
try:
|
||||
with open(det_path,'w') as ff:
|
||||
out = ff.write(' '*100)
|
||||
except OSError as e:
|
||||
logger.error(f"NO_SPACE :{det_path}:{e}")
|
||||
else:
|
||||
break
|
||||
|
||||
time.sleep(5)
|
||||
|
||||
try:
|
||||
os.remove(det_path)
|
||||
except:
|
||||
pass
|
||||
logger.info(f"ENOUGH SPACE, STARTING INFERENCE")
|
||||
detector_results, embedder_results = run_inference(file_path)
|
||||
obj_det_dict = dict()
|
||||
obj_det_dict['meta'] = {'model_version':'orin_v1'}
|
||||
obj_det_dict['scoring'] = {'start_time':start_time, 'end_time': end_time}
|
||||
obj_det_dict['json'] ={'path':det_path}
|
||||
obj_det_dict['video'] = {'path':file_path, 'target_w': target_width, 'target_h': target_height}
|
||||
|
||||
|
||||
|
||||
|
||||
by_frame_num = dict()
|
||||
for idx, sc in enumerate(detector_results):
|
||||
c_res = dict()
|
||||
c_frame = sc['frame_number']
|
||||
c_res['score'] = sc['score']
|
||||
c_res['L'] = sc['left']
|
||||
c_res['T'] = sc['top']
|
||||
c_res['W'] = sc['width']
|
||||
c_res['H'] = sc['height']
|
||||
c_res['name'] = sc['label']
|
||||
c_res['idx'] = sc['class_id']
|
||||
if c_frame not in by_frame_num:
|
||||
by_frame_num[c_frame] = list()
|
||||
|
||||
by_frame_num[c_frame].append(c_res)
|
||||
|
||||
obj_det_dict['scores'] = [{'frame':key, 'detections':val} for key,val in by_frame_num.items()]
|
||||
|
||||
|
||||
with open(det_path,'w') as ff:
|
||||
json.dump(obj_det_dict, ff, indent=4)
|
||||
|
||||
|
||||
emb_dict = dict()
|
||||
emb_dict['meta'] = {'model_version':'ViT-L-16-SigLIP2-512','host':'orin'}
|
||||
emb_dict['scoring'] = {'start_time':start_time, 'end_time': end_time}
|
||||
emb_dict['json'] ={'path':det_path}
|
||||
emb_dict['video'] = {'path':file_path, 'target_w': target_width, 'target_h': target_height}
|
||||
emb_dict['scores'] = list()
|
||||
|
||||
|
||||
for c_score in embedder_results:
|
||||
fr_num = c_score['frame_number']
|
||||
vect = c_score['vector']
|
||||
emb_dict['scores'].append({'score':vect, 'frame':fr_num})
|
||||
|
||||
with open(emb_path,'w') as ff:
|
||||
json.dump(emb_dict, ff, indent=4)
|
||||
|
||||
return "Success"
|
||||
|
||||
# %%
|
||||
consumer = kwq.create_consumer(input_topic, group_id = group_id, client_id = client_id)
|
||||
#consumer.subscribe(input_topic)
|
||||
|
||||
c_part = TopicPartition(input_topic, 0)
|
||||
consumer.assign([c_part])
|
||||
|
||||
|
||||
c_committed = consumer.committed(c_part)
|
||||
logger.info(f"KAFKA_POSITION_IS: {str(consumer.position(c_part))}")
|
||||
|
||||
if c_committed is None:
|
||||
logger.info(f"KAFKA_POSITION_NOT_COMMITTED")
|
||||
else:
|
||||
logger.info(f"KAFKA_POSITION_COMMITTED_IS: {c_committed}")
|
||||
consumer.seek(c_part, c_committed)
|
||||
logger.info("START POLLING")
|
||||
|
||||
#while True:
|
||||
# out = consumer.poll(timeout_ms=5000 , update_offsets = False)
|
||||
# msgs = list()
|
||||
# logger.info(f"KAFKA_POSITION_COMMITTED_IS: {str(consumer.committed(c_part))}")
|
||||
# logger.info(f"KAFKA_POSITION_IS: {str(consumer.position(c_part))}")
|
||||
#
|
||||
# for k, v in out.items():
|
||||
# msgs.extend(v)
|
||||
# for message in msgs:
|
||||
for message in consumer:
|
||||
logger.info(f"KAFKA_POSITION_COMMITTED_IS: {str(consumer.committed(c_part))}")
|
||||
logger.info(f"KAFKA_POSITION_IS: {str(consumer.position(c_part))}")
|
||||
|
||||
logger.info(f"MSG_RECEIVED :{message}")
|
||||
logger.info(f"INFERENCE_START: {pfm(message.key)}")
|
||||
result = run_inference_for_file(message.key)
|
||||
logger.info(f"INFERENCE_DONE:{pfm(result)} {message.key}")
|
||||
oandm = OffsetAndMetadata(message.offset,'')
|
||||
consumer.commit({c_part:oandm})
|
||||
producer.send(topic_produce, value=message.value, key=message.key)
|
||||
|
||||
Reference in New Issue
Block a user