CVDec 29, 2023

Tracking with Human-Intent Reasoning

CMUUW
arXiv:2312.17448v132 citationsh-index: 26Has Code
Originality Incremental advance
AI Analysis

This addresses the problem of simplifying and automating object tracking for video analysis applications, though it builds incrementally on existing perception and LVLM methods.

The paper tackles the cumbersome target specification in object tracking by proposing Instruction Tracking, where trackers use implicit instructions from a Large Vision-Language Model (LVLM) for automatic reasoning-based tracking. It introduces TrackGPT, which achieves a state-of-the-art performance of 66.5 J&F on the Refer-DAVIS benchmark.

Advances in perception modeling have significantly improved the performance of object tracking. However, the current methods for specifying the target object in the initial frame are either by 1) using a box or mask template, or by 2) providing an explicit language description. These manners are cumbersome and do not allow the tracker to have self-reasoning ability. Therefore, this work proposes a new tracking task -- Instruction Tracking, which involves providing implicit tracking instructions that require the trackers to perform tracking automatically in video frames. To achieve this, we investigate the integration of knowledge and reasoning capabilities from a Large Vision-Language Model (LVLM) for object tracking. Specifically, we propose a tracker called TrackGPT, which is capable of performing complex reasoning-based tracking. TrackGPT first uses LVLM to understand tracking instructions and condense the cues of what target to track into referring embeddings. The perception component then generates the tracking results based on the embeddings. To evaluate the performance of TrackGPT, we construct an instruction tracking benchmark called InsTrack, which contains over one thousand instruction-video pairs for instruction tuning and evaluation. Experiments show that TrackGPT achieves competitive performance on referring video object segmentation benchmarks, such as getting a new state-of the-art performance of 66.5 $\mathcal{J}\&\mathcal{F}$ on Refer-DAVIS. It also demonstrates a superior performance of instruction tracking under new evaluation protocols. The code and models are available at \href{https://github.com/jiawen-zhu/TrackGPT}{https://github.com/jiawen-zhu/TrackGPT}.

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