CVJan 20, 2024

Unifying Visual and Vision-Language Tracking via Contrastive Learning

arXiv:2401.11228v165 citationsHas CodeAAAI
Originality Incremental advance
AI Analysis

It addresses the modality gap in tracking for researchers and practitioners, but is incremental as it builds on existing contrastive learning and multi-modal methods.

The paper tackles the problem of single object tracking with different modal references (BBOX, NL, NL+BBOX) by proposing UVLTrack, a unified tracker that handles all three settings with the same parameters, achieving promising performance on multiple datasets.

Single object tracking aims to locate the target object in a video sequence according to the state specified by different modal references, including the initial bounding box (BBOX), natural language (NL), or both (NL+BBOX). Due to the gap between different modalities, most existing trackers are designed for single or partial of these reference settings and overspecialize on the specific modality. Differently, we present a unified tracker called UVLTrack, which can simultaneously handle all three reference settings (BBOX, NL, NL+BBOX) with the same parameters. The proposed UVLTrack enjoys several merits. First, we design a modality-unified feature extractor for joint visual and language feature learning and propose a multi-modal contrastive loss to align the visual and language features into a unified semantic space. Second, a modality-adaptive box head is proposed, which makes full use of the target reference to mine ever-changing scenario features dynamically from video contexts and distinguish the target in a contrastive way, enabling robust performance in different reference settings. Extensive experimental results demonstrate that UVLTrack achieves promising performance on seven visual tracking datasets, three vision-language tracking datasets, and three visual grounding datasets. Codes and models will be open-sourced at https://github.com/OpenSpaceAI/UVLTrack.

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