1. Towards Debiasing Frame Length Bias in Text-Video Retrieval via Causal Intervention
- Author
-
Satar, Burak, Zhu, Hongyuan, Zhang, Hanwang, and Lim, Joo Hwee
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Information Retrieval ,Computer Science - Multimedia - Abstract
Many studies focus on improving pretraining or developing new backbones in text-video retrieval. However, existing methods may suffer from the learning and inference bias issue, as recent research suggests in other text-video-related tasks. For instance, spatial appearance features on action recognition or temporal object co-occurrences on video scene graph generation could induce spurious correlations. In this work, we present a unique and systematic study of a temporal bias due to frame length discrepancy between training and test sets of trimmed video clips, which is the first such attempt for a text-video retrieval task, to the best of our knowledge. We first hypothesise and verify the bias on how it would affect the model illustrated with a baseline study. Then, we propose a causal debiasing approach and perform extensive experiments and ablation studies on the Epic-Kitchens-100, YouCook2, and MSR-VTT datasets. Our model overpasses the baseline and SOTA on nDCG, a semantic-relevancy-focused evaluation metric which proves the bias is mitigated, as well as on the other conventional metrics., Comment: Accepted by the British Machine Vision Conference (BMVC) 2023. Project Page: https://buraksatar.github.io/FrameLengthBias
- Published
- 2023