trafficVision

MIVisionX toolkit is a comprehensive computer vision and machine intelligence libraries, utilities and applications bundled into a single toolkit.

View the Project on GitHub srohit0/trafficVision

Traffic Vision

This app detects cars/buses in a live traffic at a phenomenal 50 frames/sec with HD resolution (1920x1080) using deep learning network Yolo-V2. The model used in the app is optimized for inferencing performnce on AMD-GPUs using MIVisionX toolkit.

Traffic Vision Animation

Features

  1. Vehicle detection with bounding box
  2. Vehicle direction ((upward, downward) detection
  3. Vehicle speed estimation
  4. Vehicle type: bus/car.

How to Run

Use Model

<img src=”media/speed_detection_user_interface.jpg” width=600>

Demo

App starts the demo, if no other option is provided. Demo uses a video stored in the media/ dir.

% ./main.py
('Loaded', 'yoloOpenVX')
OK: loaded 22 kernels from libvx_nn.so
OK: OpenVX using GPU device#0 (gfx900) [OpenCL 1.2 ] [SvmCaps 0 1]
OK: annCreateInference: successful
Processed a total of  102 frames
OK: OpenCL buffer usage: 87771380, 46/46
%

Here is the link to YouTube video detecting cars, bounding boxes, car speed, and confidence scores.

Other Examples

recorded video

  1. ./main.py –video /vid.mp4

traffic cam ip

  1. ./main.py –cam_ip ‘http://166.149.104.112:8082/snap.jpg’

Installation

Prerequisites

  1. GPU: Radeon Instinct or Vega Family of Products with ROCm and OpenCL development kit
  2. Install AMD’s MIVisionX toolkit : AMD’s MIVisionX toolkit is a comprehensive computer vision and machine intelligence libraries, utilities
  3. CMake, Caffe
  4. Google’s Protobuf

Steps

% git clone https://github.com/srohit0/trafficVision

1. Model Conversion

This steps downloads yolov2-tiny for voc dataset and converts to MIVision’s openVX model.

% cd trafficVision/model
% bash ./prepareModel.sh

More details on the pre-requisite (like caffe) of the model conversion in the models/ dir.

2. MIVision Model Compilation

% cd trafficVision
% make

3. Test App

% cd trafficVision
% make test

It’ll display detection all videos in media/ dir.

Design

This section is a guide for developers, who would like to port vision and object detections models to AMD’s Radeon GPUs from other frameworks including tensorflow, caffe or pytorch.

High Level Design

Lower Level Modules

These lower level modules can be found as python modules (files) or packages (directories) in this repository.

Development

Model Conversion

Follow model conversion process similar to the one described below. <img src=”media/speed_detection_model_conversion.jpg” width=680>

Infrastructure

Make sure you’ve infrastructure pre-requisites installed before you start porting neural network model for inferencing. <img src=”media/speed_detection_infrastructure.jpg” width=480>

Developed and Tested on

  1. Hardware
    1. AMD Ryzen Threadripper 1900X 8-Core Processor
    2. Accelerator = Radeon Instinct™ MI25 Accelerator
  2. Software
    1. Ubuntu 16.04 LTS OS
    2. Python 2.7
    3. MIVisionX 1.7.0
    4. AMD OpenVX 0.9.9
    5. GCC 5.4

Credit

References

  1. yoloV2 paper
  2. Tiny Yolo aka Darknet reference network
  3. MiVisionX Setup
  4. AMD OpenVX
  5. Optimization with OpenVX Graphs
  6. Measuring Traffic Speed With Deep Learning Object Detection