Challenge: Existing benchmarks for video understanding often focus on specific aspects, overlooking the holistic nature of video content.
Approach: They propose a temporal-oriented benchmark for fine-grained understanding on dense dynamic videos with two complementary tasks: captioning and QA.
Outcome: The proposed model performs well on diverse video scenarios and dynamic videos, with interpretable and robust evaluation criteria.

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Grounded-VideoLLM: Sharpening Fine-grained Temporal Grounding in Video Large Language Models (2025.findings-emnlp)

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Challenge: Video Large Language Models (VLMs) have been praised for their performance in coarse-grained video understanding but still face ineffective temporal grounding and inadequate timestamp representations.
Approach: They propose a novel Video-LLM that senses and reasoned over specific video moments with fine-grained temporal precision.
Outcome: The proposed model surpasses existing models in fine-grained video understanding tasks and exhibits strong potential as a general video understanding assistant.
Mitigating the Discrepancy Between Video and Text Temporal Sequences: A Time-Perception Enhanced Video Grounding method for LLM (2025.coling-main)

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Challenge: Existing video LLMs excel at capturing the overall description of a video but lack the ability to demonstrate an understanding of temporal dynamics and localized content within the video.
Approach: They propose a Time-Perception Enhanced Video Grounding via Boundary Perception and Temporal Reasoning to improve LLMs' understanding of video temporality.
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VideoQA-TA: Temporal-Aware Multi-Modal Video Question Answering (2025.coling-main)

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Challenge: Existing methods for video question answering align visual or textual features directly with large language models, limiting the deep semantic association between modalities and hindering a comprehensive understanding of interactions within spatial and temporal contexts.
Approach: They propose a temporal-aware framework for multi-modal video question answering that aligns videos and questions at fine-grained levels.
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TemporalVLM: Video LLMs for Temporal Reasoning in Long Videos (2026.findings-acl)

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Challenge: Several video understanding applications require the ability of temporal reasoning.
Approach: They propose a video large language model for temporal reasoning and fine-grained understanding in long videos.
Outcome: The proposed model outperforms existing methods in time and motion studies and temporal action segmentation evaluations.
TempCompass: Do Video LLMs Really Understand Videos? (2024.findings-acl)

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Challenge: Existing benchmarks on video large language models lack a comprehensive feedback on temporal perception ability . current models cannot distinguish between different temporal aspects and are limited in task formats .
Approach: They propose a benchmark to evaluate temporal perception ability of video large language models . they construct conflicting videos that share the same static content but differ in a specific temporal aspect .
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InfiniBench: A Benchmark for Large Multi-Modal Models in Long-Form Movies and TV Shows (2025.emnlp-main)

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Challenge: Existing benchmarks fail to test the full range of cognitive skills needed to process long-form videos .
Approach: They propose a benchmark to evaluate models' ability to process long-form videos rigorously.
Outcome: The benchmark measures the cognitive skills of models in understanding long-form videos . it offers the largest set of question-answer pairs for long video comprehension .
StreamingEval: A Unified Evaluation Framework towards Realistic Streaming Video Understanding (2026.findings-acl)

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Challenge: Existing research on streaming video understanding focuses on isolated aspects of visual understanding, but ignores practical deployability under realistic resource constraints.
Approach: They propose a framework to evaluate streaming video understanding capabilities under realistic constraints.
Outcome: StreamingEval benchmarks offline and online video models under a standardized protocol . it evaluates visual encoding efficiency, text decoding latency and task performance .
TC-Bench: Benchmarking Temporal Compositionality in Conditional Video Generation (2025.findings-acl)

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Challenge: Existing video generation models struggle to interpret compositional changes and synthesize components across different time steps.
Approach: They propose a temporal compositionality benchmark that uses text prompts and ground truth videos to evaluate compositional changes in video.
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Do Video Language Models really understand the video contexts? (2025.naacl-srw)

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Challenge: Recent advances in VideoQA performance have shown that visual language models are effective but the processes of understanding and reasoning in VLMs remain under-explored.
Approach: They propose a framework that incorporates a fine-grained question generation and answering process to measure how well VLMs understand video question answering tasks.
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VideoINSTA: Zero-shot Long Video Understanding via Informative Spatial-Temporal Reasoning with LLMs (2024.findings-emnlp)

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Challenge: Long video understanding presents unique challenges due to the complexity of reasoning over extended timespans.
Approach: They propose a framework VideoINSTA to leverage large language models for video understanding . they propose 'event-based temporalreasoning' and 'content-based spatial reasoning'
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