An Attention-Based Deep Learning Model for Multiple Pedestrian Attributes Recognition
This work addresses the problem of pedestrian attribute recognition for surveillance applications, offering an incremental improvement over existing methods.
The paper tackles the challenge of recognizing multiple pedestrian attributes in surveillance footage by proposing a multi-task deep learning model with an element-wise multiplication layer and a weighted-sum loss term, achieving state-of-the-art performance on RAP and PETA datasets.
The automatic characterization of pedestrians in surveillance footage is a tough challenge, particularly when the data is extremely diverse with cluttered backgrounds, and subjects are captured from varying distances, under multiple poses, with partial occlusion. Having observed that the state-of-the-art performance is still unsatisfactory, this paper provides a novel solution to the problem, with two-fold contributions: 1) considering the strong semantic correlation between the different full-body attributes, we propose a multi-task deep model that uses an element-wise multiplication layer to extract more comprehensive feature representations. In practice, this layer serves as a filter to remove irrelevant background features, and is particularly important to handle complex, cluttered data; and 2) we introduce a weighted-sum term to the loss function that not only relativizes the contribution of each task (kind of attributed) but also is crucial for performance improvement in multiple-attribute inference settings. Our experiments were performed on two well-known datasets (RAP and PETA) and point for the superiority of the proposed method with respect to the state-of-the-art. The code is available at https://github.com/Ehsan-Yaghoubi/MAN-PAR-.