Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Pedestrian Attribute Recognition as Label-balanced Multi-label Learning

About

Rooting in the scarcity of most attributes, realistic pedestrian attribute datasets exhibit unduly skewed data distribution, from which two types of model failures are delivered: (1) label imbalance: model predictions lean greatly towards the side of majority labels; (2) semantics imbalance: model is easily overfitted on the under-represented attributes due to their insufficient semantic diversity. To render perfect label balancing, we propose a novel framework that successfully decouples label-balanced data re-sampling from the curse of attributes co-occurrence, i.e., we equalize the sampling prior of an attribute while not biasing that of the co-occurred others. To diversify the attributes semantics and mitigate the feature noise, we propose a Bayesian feature augmentation method to introduce true in-distribution novelty. Handling both imbalances jointly, our work achieves best accuracy on various popular benchmarks, and importantly, with minimal computational budget.

Yibo Zhou, Hai-Miao Hu, Yirong Xiang, Xiaokang Zhang, Haotian Wu• 2024

Related benchmarks

TaskDatasetResultRank
Pedestrian Attribute RecognitionEventPAR (test)
mA66.92
40
Pedestrian Attribute RecognitionMSP60K
mA74.03
19
Pedestrian Attribute RecognitionDukeMTMC-VID-Attribute RGB-Event based
Accuracy67.53
6
Showing 3 of 3 rows

Other info

Follow for update