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We plan to release our code in CVPR 2018 "Video Person Re-identification with Competitive Snippet-similarity Aggregation and Co-attentive Snippet Embedding"

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tanbo1/video_reid

 
 

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video_reid

This is sample code, it needs addtional image and optical flow data.

optical_flow data for ilids_vid https://drive.google.com/open?id=1u9jMd9wmmW25fAKGTRWg6pPRJtemcp4v

Working Plan

  • modify the original code to make them runable on pytorch 0.4.0

    thanks Chenyang Yu for contribution, the bug free version has been merged into the master branch

  • providing the code to process the raw optical flow

We are recruiting Research Intern and Full-time Researcher in Sensetime

We are one research team belonging to Sensetime Research Institute. Our research focuses on large-scale (city-level) person re-ID and Face recognition. We have sufficient computational resources and experienced computer vision research and engineering team located in Shenzhen and HongKong. Members include but not limited to Rui Zhao, Kaipeng and me, we also have excellent interns from top AI labs in and out of China. The current goal of our team is to develop continual learning system that can handle billions of person or face images, and continuously improve the recognition accuracy (The work is going well, but we need more experienced researchers or programers that can futher enhance our system together with us). Besides, we are also interested in developing new person Re-ID or face recognition algorithm that may have academic value.

We NEED full-time researchers that can engage in developing our continue learning system. We also welcome research interns to together explore the border of person re-ID and face recognition.

For the candidates, we expect you are very strong in the one of the following three aspects.

  1. Strong research skills , for example Postgraduate with paper in CCF A-tier conferences or journals (CVPR, ICCV, TPAMI etc.) / or Bachelor with paper CCF B-tier conferences or journals is plus

  2. Strong programming skills, for example winners at ACM or related competitions, e.g. ACM pre-gold ; NOI silver or above; Star of Baidu finalist; or high-impact open source projects on github is plus

  3. Experience of winning top leaderboard in research competitions, eg, Kaggle

If you are interested in, Please contact [email protected] or [email protected]

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We plan to release our code in CVPR 2018 "Video Person Re-identification with Competitive Snippet-similarity Aggregation and Co-attentive Snippet Embedding"

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