There are four parallel branches in Hi-AFA, and their numbers of convolution blocks gradually decrease to 1. The feature maps are not only fed into the following stage in...
Abstract:
Recent efforts on person re-identification have shown promising results by learning discriminative features via the multi-branch network. To further boost feature discrim...Show MoreMetadata
Abstract:
Recent efforts on person re-identification have shown promising results by learning discriminative features via the multi-branch network. To further boost feature discrimination, attention mechanism has also been extensively employed. However, the branches on the main level rarely communicate with others in existing branching models, which may compromise the ability of mining diverse features. To mitigate this issue, a novel framework called Hierarchical Attentive Feature Aggregation (Hi-AFA) is proposed. In Hi-AFA, a hierarchical aggregation mechanism is applied to learn attentive features. The current feature map is not only fed into the next stage, but also aggregated into another branch, leading to hierarchical feature flows along depth and parallel branches. We also present a simple Feature Suppression Operation (FSO) and a Lightweight Dual Attention Module (LDAM) to guide feature learning. The FSO can partially erase the salient features already discovered, such that more potential clues can be mined by other branches with the help of LDAM. By this manner, the branches could cooperate to mine richer and more diverse feature representations. The hierarchical aggregation and multi-granularity feature learning are integrated into a unified architecture that builds upon OSNet, resulting a resource-economical and effective person re-identification model. Extensive experiments on four mainstream datasets, including Market-1501, DukeMTMC-reID, MSMT17, and CUHK03, are conducted to validate the effectiveness of the proposed method, and results show that state-of-the-art performance is achieved.
There are four parallel branches in Hi-AFA, and their numbers of convolution blocks gradually decrease to 1. The feature maps are not only fed into the following stage in...
Published in: IEEE Access ( Volume: 12)
Funding Agency:

School of Computer Engineering, Suzhou Vocational University, Suzhou, China
Jiangsu Province Support Software Engineering Research and Development Center for Modern Information Technology Application in Enterprise, Suzhou, China
Husheng Dong received the M.S. and Ph.D. degrees from Soochow University, in 2008 and 2018, respectively. He is currently an Associate Professor with the School of Computer Engineering, Suzhou Vocational University. His research interests include computer vision, image processing, and deep learning.
Husheng Dong received the M.S. and Ph.D. degrees from Soochow University, in 2008 and 2018, respectively. He is currently an Associate Professor with the School of Computer Engineering, Suzhou Vocational University. His research interests include computer vision, image processing, and deep learning.View more

School of Information Technology, Suzhou Institute of Trade and Commerce, Suzhou, China
Ping Lu received the B.Eng. and M.S. degrees from the School of Computer Science and Technology, Soochow University, in 2002 and 2005, respectively. She is currently an Associate Professor with Suzhou Institute of Trade and Commerce. Her research interests include digital image processing and pattern recognition.
Ping Lu received the B.Eng. and M.S. degrees from the School of Computer Science and Technology, Soochow University, in 2002 and 2005, respectively. She is currently an Associate Professor with Suzhou Institute of Trade and Commerce. Her research interests include digital image processing and pattern recognition.View more

School of Computer Engineering, Suzhou Vocational University, Suzhou, China
Jiangsu Province Support Software Engineering Research and Development Center for Modern Information Technology Application in Enterprise, Suzhou, China
Husheng Dong received the M.S. and Ph.D. degrees from Soochow University, in 2008 and 2018, respectively. He is currently an Associate Professor with the School of Computer Engineering, Suzhou Vocational University. His research interests include computer vision, image processing, and deep learning.
Husheng Dong received the M.S. and Ph.D. degrees from Soochow University, in 2008 and 2018, respectively. He is currently an Associate Professor with the School of Computer Engineering, Suzhou Vocational University. His research interests include computer vision, image processing, and deep learning.View more

School of Information Technology, Suzhou Institute of Trade and Commerce, Suzhou, China
Ping Lu received the B.Eng. and M.S. degrees from the School of Computer Science and Technology, Soochow University, in 2002 and 2005, respectively. She is currently an Associate Professor with Suzhou Institute of Trade and Commerce. Her research interests include digital image processing and pattern recognition.
Ping Lu received the B.Eng. and M.S. degrees from the School of Computer Science and Technology, Soochow University, in 2002 and 2005, respectively. She is currently an Associate Professor with Suzhou Institute of Trade and Commerce. Her research interests include digital image processing and pattern recognition.View more