Resolving Semantic Confusions for Improved Zero-Shot Detection
Abstract
Zero-shot detection (ZSD) is a challenging task where we aim to recognize and localize objects simultaneously, even when our model has not been trained with visual samples of a few target ("unseen") classes. Recently, methods employing generative models like GANs have shown some of the best results, where unseen-class samples are generated based on their semantics by a GAN trained on seen-class data, enabling vanilla object detectors to recognize unseen objects. However, the problem of semantic confusion still remains, where the model is sometimes unable to distinguish between semantically-similar classes. In this work, we propose to train a generative model incorporating a triplet loss that acknowledges the degree of dissimilarity between classes and reflects them in the generated samples. Moreover, a cyclic-consistency loss is also enforced to ensure that generated visual samples of a class highly correspond to their own semantics. Extensive experiments on two benchmark ZSD datasets - MSCOCO and PASCAL-VOC - demonstrate significant gains over the current ZSD methods, reducing semantic confusion and improving detection for the unseen classes.
Cite
@article{arxiv.2212.06097,
title = {Resolving Semantic Confusions for Improved Zero-Shot Detection},
author = {Sandipan Sarma and Sushil Kumar and Arijit Sur},
journal= {arXiv preprint arXiv:2212.06097},
year = {2022}
}
Comments
Accepted to BMVC 2022 (Oral). 15 pages, 5 figures. Project page: https://github.com/sandipan211/ZSD-SC-Resolver