rotorliu / DeepStream-Yolo

NVIDIA DeepStream SDK 5 configuration for YoloV4 and YoloV3 model

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DeepStream-Yolo

NVIDIA DeepStream SDK configuration for Yolo model

Tested on NVIDIA Jetson Nano

Comparison between NVIDIA DeepStream SDK and Darknet: https://github.com/marcoslucianops/Benchmark-Yolo

YoloV4-Tiny configuration for DeepStream (Not official)

YoloV5s configuration for DeepStream (Not official)

Requirements

Editing default model

  1. Copy nvdsinfer_custom_impl_Yolo folder (located in /opt/nvidia/deepstream/deepstream-5.0/sources/objectDetector_Yolo/) to your custom yolo directory (must be in sources folder).
  2. Edit Yolo DeepStream for your custom model:
  • Example for YoloV3-Tiny:

Line 34:

static const int NUM_CLASSES_YOLO = 80; // Number of classes of your custom model

Line 299-304:

    static const std::vector<float> kANCHORS = {
        10, 14, 23, 27, 37, 58, 81, 82, 135, 169, 344, 319}; // Anchors of your custom model
    static const std::vector<std::vector<int>> kMASKS = {
        {3, 4, 5}, // First mask of your custom model
        {1, 2, 3}}; // Second mask of your custom model
  1. Copy and remane your obj.names file to labels.txt to your custom yolo directory.
  2. Copy your yolo.cfg (v3, v3-tiny, etc.) file to your custom yolo directory.
  3. Copy config_infer_primary.txt and deepstream_app_config.txt (same of your yolo model; v3, v3-tiny, etc.) from /opt/nvidia/deepstream/deepstream-5.0/sources/objectDetector_Yolo to your custom yolo directory.

Compiling edited model

  1. Check your CUDA version (nvcc --version)
  2. Open terminal
  3. Go to your custom yolo directory
  4. Type this command (example for CUDA 10.2 version):
CUDA_VER=10.2 make -C nvdsinfer_custom_impl_Yolo

Editing yolo.cfg file

Set batch=1 and subdivisions=1

[net]
# Testing
batch=1
subdivisions=1
# Training
#batch=64
#subdivisions=16

Understanding and editing deepstream_app_config

To understand and edit deepstream_app_config file, read the DeepStream SDK Development Guide - Configuration Groups

In this repository have example of deepstream_app_config_yoloV3_tiny.txt file for YoloV3-Tiny.

  • Edit tiled-display
[tiled-display]
enable=1
# If you have 1 stream use 1/1 (rows/columns), if you have 4 streams use 2/2 or 4/1 or 1/4 (rows/columns)
rows=1
columns=1
# Resolution of tiled display
width=1280
height=720
gpu-id=0
nvbuf-memory-type=0

  • Edit source

Example for 1 source:

[source0]
enable=1
# 1=Camera (V4L2), 2=URI, 3=MultiURI, 4=RTSP, 5=Camera (CSI; Jetson only)
type=3
# Stream URL
uri=rtsp://192.168.1.2/Streaming/Channels/101/httppreview
# Number of sources copy (if > 1, you need edit rows/columns in tiled-display section and batch-size in streammux section and config_infer_primary_yoloV3_tiny.txt; need type=3 for more than 1 num-sources)
num-sources=1
gpu-id=0
cudadec-memtype=0

Example for 1 duplcated source:

[source0]
enable=1
type=3
uri=rtsp://192.168.1.2/Streaming/Channels/101/httppreview
num-sources=2
gpu-id=0
cudadec-memtype=0

Example for 2 sources:

[source0]
enable=1
type=3
uri=rtsp://192.168.1.2/Streaming/Channels/101/httppreview
num-sources=1
gpu-id=0
cudadec-memtype=0

[source1]
enable=1
type=3
uri=rtsp://192.168.1.3/Streaming/Channels/101/httppreview
num-sources=1
gpu-id=0
cudadec-memtype=0

  • Edit sink

Example for 1 source or 1 duplicated source:

[sink0]
enable=1
# 1=Fakesink, 2=EGL (nveglglessink), 3=Filesink, 4=RTSP, 5=Overlay (Jetson only)
type=2
# Indicates how fast the stream is to be rendered (0=As fast as possible, 1=Synchronously)
sync=0
# The ID of the source whose buffers this sink must use
source-id=0
gpu-id=0
nvbuf-memory-type=0

Example for 2 sources:

[sink0]
enable=1
type=2
sync=0
source-id=0
gpu-id=0
nvbuf-memory-type=0

[sink1]
enable=1
type=2
sync=0
source-id=1
gpu-id=0
nvbuf-memory-type=0

  • Edit streammux

Example for 1 source:

[streammux]
gpu-id=0
# Boolean property to inform muxer that sources are live
live-source=1
# Number of sources
batch-size=1
# Time out in usec, to wait after the first buffer is available to push the batch even if the complete batch is not formed
batched-push-timeout=40000
# Resolution of streammux
width=1920
height=1080
enable-padding=0
nvbuf-memory-type=0

Example for 1 duplicated source or 2 sources:

[streammux]
gpu-id=0
live-source=1
batch-size=2
batched-push-timeout=-1
width=1920
height=1080
enable-padding=0
nvbuf-memory-type=0

  • Edit primary-gie
[primary-gie]
enable=1
gpu-id=0
gie-unique-id=1
nvbuf-memory-type=0
config-file=config_infer_primary_yoloV3_tiny.txt
  • You can remove [tracker] section, if you don't use it.

Understanding and editing config_infer_primary

To understand and edit config_infer_primary file, read the NVIDIA DeepStream Plugin Manual - Gst-nvinfer File Configuration Specifications

In this repository have example of config_infer_primary_yoloV3_tiny.txt file for YoloV3-Tiny.

  • Edit model-color-format accoding number of channels in yolo.cfg (1=GRAYSCALE, 3=RGB)
# 0=RGB, 1=BGR, 2=GRAYSCALE
model-color-format=0

  • Edit model-engine-file (example for batch-size=1 and network-mode=2)
model-engine-file=model_b1_gpu0_fp16.engine

  • Edit batch-size
# Number of sources
batch-size=1

  • Edit network-mode
# 0=FP32, 1=INT8, 2=FP16
network-mode=0

  • Edit num-detected-classes according number of classes in yolo.cfg
num-detected-classes=80

  • Edit network-type
# 0:Detector, 1:Classifier, 2:Segmentation
network-type=0

  • Add/edit interval (FPS increase if > 0)
# Interval of detection
interval=1

  • Change threshold to pre-cluster-threshold
threshold=0.7

to

pre-cluster-threshold=0.7

  • To get more similar inference results to Darknet, change
nms-iou-threshold=0.3
pre-cluster-threshold=0.7

to

# Darknet nms
nms-iou-threshold=0.45
# Darknet conf_thresh
pre-cluster-threshold=0.25

Testing model

To run your custom yolo model, use this command (in your custom model directory; example for yolov3-tiny):

deepstream-app -c deepstream_app_config_yoloV3_tiny.txt

Custom functions in your model

You can get metadata from deepstream in Python and C. For C, you need edit deepstream-app or deepstream-test code. For Python your need install and edit this.

You need manipulate NvDsObjectMeta, NvDsFrameMeta and NvOSD_RectParams to get label, position, etc. of bboxs.

In C deepstream-app application, your code need be in analytics_done_buf_prob function. In C/Python deepstream-test application, your code need be in tiler_src_pad_buffer_probe function.

Python is slightly slower than C (on Jetson Nano, ~2FPS).

FAQ

Q: Can I run custom yolo model on deepstream with non-square shape?

A: You can, but the accuracy will greatly decrease. If you want to test, see this patch.


Q: How to make more than 1 yolo inference?

A: See MULTIPLE-INFERENCES.md in this repository.


Q: How to use YoloV3-Tiny-PRN? (~2FPS increase on NVIDIA Jetson Nano)

A: Replace nvdsinfer_custom_impl_Yolo/yolo.cpp file to my yolo.cpp file and change config_infer.txt file from

custom-network-config=yolov3-tiny.cfg
model-file=yolov3-tiny.weights

to

custom-network-config=yolov3-tiny-prn.cfg
model-file=yolov3-tiny-prn.weights

I'm not an expert in DeepStream or Yolo, but I can help in any issue or question.

Sorry for any English error, it is not my native language.

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NVIDIA DeepStream SDK 5 configuration for YoloV4 and YoloV3 model