Drawing Attention to Detail: Pose Alignment through Self-Attention for Fine-Grained Object Classification

02/09/2023
by   Salwa Al Khatib, et al.
0

Intra-class variations in the open world lead to various challenges in classification tasks. To overcome these challenges, fine-grained classification was introduced, and many approaches were proposed. Some rely on locating and using distinguishable local parts within images to achieve invariance to viewpoint changes, intra-class differences, and local part deformations. Our approach, which is inspired by P2P-Net, offers an end-to-end trainable attention-based parts alignment module, where we replace the graph-matching component used in it with a self-attention mechanism. The attention module is able to learn the optimal arrangement of parts while attending to each other, before contributing to the global loss.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset