Objects detection in the first frame and Tracking special object by SiamRPN.
This repo illustrates a automatic detection and tracking of single object. In the process, It first detects all the objects in the first frame of input videos. Next, we should input a examplar image and it can determine the initial position of the target that is most similar to the examplar image. Finally the tracker could finish the single object tracking.
- demo.py -- implements the detection, identify and tracking pipeline.
detection folder-- Faster RCNN detectionidentify folder-- phash to identify tracking objectvideos folder-- videos needed to handle- examplar.png -- a snapshot of object to track
It use Faster RCNN to finish object detection. This code was based on longcw's repo longcw/faster_rcnn_pytorch. It will be improved according to the latest papers.
It use phash to identify a special object.I will add Siamese Net and traditional Digital image processing to do it in the future.
It use SiamRPN to finish object tracking. The codes was based on huanglianghua/siamrpn-pytorch. It will be improved according to the latest papers(DSiamRPN).
- Python 3.6
- PyTorch 0.4.0 or higher
- CUDA 8.0 or higher
In Detection stage. It will detects all cars in the first frame as shown below.
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In Identify stage. We want to track the car as shown below. It could determine the initial position of the target based on Detection stage.
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In Tracking stage. It will track the car.
- Clone the code:
git clone https://github.com/mj000001/Object-Detection-And-Tracking.git
- Create a folder:
cd Object-Detection-And-Tracking && mkdir pretrained
- Pretrained Model:
In the root directory of Object-Detection-And-Tracking:Download the pretrained model.pth and VGGnet_fast_rcnn_iter_70000 from Baidu Yun with extraction code gm4f and put the files under pretrained/.
- Compilation:
Install python package
pip install -r requirements.txt
Build the Cython modules for nms and the roi_pooling layer
cd detection/faster_rcnn
./make.sh
- Run Demo:
python demo.py