DTVLT: A Multi-modal Diverse Text Benchmark for Visual Language Tracking Based on LLM
Visual language tracking (VLT) has emerged as a cutting-edge research area, harnessing linguistic data to enhance algorithms with multi-modal inputs and broadening the scope of traditional single object tracking (SOT) to encompass video understanding applications. Despite this, most VLT benchmarks s...
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Zusammenfassung: | Visual language tracking (VLT) has emerged as a cutting-edge research area,
harnessing linguistic data to enhance algorithms with multi-modal inputs and
broadening the scope of traditional single object tracking (SOT) to encompass
video understanding applications. Despite this, most VLT benchmarks still
depend on succinct, human-annotated text descriptions for each video. These
descriptions often fall short in capturing the nuances of video content
dynamics and lack stylistic variety in language, constrained by their uniform
level of detail and a fixed annotation frequency. As a result, algorithms tend
to default to a "memorize the answer" strategy, diverging from the core
objective of achieving a deeper understanding of video content. Fortunately,
the emergence of large language models (LLMs) has enabled the generation of
diverse text. This work utilizes LLMs to generate varied semantic annotations
(in terms of text lengths and granularities) for representative SOT benchmarks,
thereby establishing a novel multi-modal benchmark. Specifically, we (1)
propose a new visual language tracking benchmark with diverse texts, named
DTVLT, based on five prominent VLT and SOT benchmarks, including three
sub-tasks: short-term tracking, long-term tracking, and global instance
tracking. (2) We offer four granularity texts in our benchmark, considering the
extent and density of semantic information. We expect this multi-granular
generation strategy to foster a favorable environment for VLT and video
understanding research. (3) We conduct comprehensive experimental analyses on
DTVLT, evaluating the impact of diverse text on tracking performance and hope
the identified performance bottlenecks of existing algorithms can support
further research in VLT and video understanding. The proposed benchmark,
experimental results and toolkit will be released gradually on
http://videocube.aitestunion.com/. |
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DOI: | 10.48550/arxiv.2410.02492 |