DocumentCode
3775918
Title
Multi-attribute learning for pedestrian attribute recognition in surveillance scenarios
Author
Dangwei Li;Xiaotang Chen;Kaiqi Huang
Author_Institution
CRIPAC & NLPR, CASIA
fYear
2015
Firstpage
111
Lastpage
115
Abstract
In real video surveillance scenarios, visual pedestrian attributes, such as gender, backpack, clothes types, are very important for pedestrian retrieval and person reidentification. Existing methods for attributes recognition have two drawbacks: (a) handcrafted features (e.g. color histograms, local binary patterns) cannot cope well with the difficulty of real video surveillance scenarios; (b) the relationship among pedestrian attributes is ignored. To address the two drawbacks, we propose two deep learning based models to recognize pedestrian attributes. On the one hand, each attribute is treated as an independent component and the deep learning based single attribute recognition model (DeepSAR) is proposed to recognize each attribute one by one. On the other hand, to exploit the relationship among attributes, the deep learning framework which recognizes multiple attributes jointly (DeepMAR) is proposed. In the DeepMAR, one attribute can contribute to the representation of other attributes. For example, the gender of woman can contribute to the representation oflong hair and wearing skirt. Experiments on recent popular pedestrian attribute datasets illustrate that our proposed models achieve the state-of-the-art results.
Keywords
"Surveillance","Hair","Training","Computational modeling","Pattern recognition","Visualization","Machine learning"
Publisher
ieee
Conference_Titel
Pattern Recognition (ACPR), 2015 3rd IAPR Asian Conference on
Electronic_ISBN
2327-0985
Type
conf
DOI
10.1109/ACPR.2015.7486476
Filename
7486476
Link To Document