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Temporal-Aware Cluster-based Video Summarization: An Efficient and Interpretable Approach


Основні поняття
A novel training-free approach called Temporal-Aware Cluster-based SUMmarization (TAC-SUM) that leverages temporal relations between video frames to generate concise and coherent video summaries.
Анотація
The paper proposes a training-free approach called Temporal-Aware Cluster-based SUMmarization (TAC-SUM) for video summarization. The key highlights are: TAC-SUM integrates temporal context into the clustering mechanism to address the limitations of traditional cluster-based methods, which often overlook temporal coherence. The method comprises four main stages: Generating contextual embeddings by sampling the video and extracting visual embeddings using pre-trained models. Distilling global context into local semantics through a coarse-to-fine contextual clustering approach and semantic partitioning. Selecting keyframes and computing importance scores for each frame based on the partitions. Implementing simple and naive rules for keyframe selection and importance scoring. Experimental results on the SumMe dataset show that TAC-SUM significantly outperforms existing unsupervised cluster-based methods and achieves comparable performance to state-of-the-art supervised techniques. The qualitative analysis demonstrates the interpretability of TAC-SUM's summarization results, with the generated importance scores aligning well with human-annotated scores. While the current approach relies on naive rules, the authors acknowledge the potential for future improvements by integrating learnable components to enhance adaptability and data-driven summarization.
Статистика
The video dataset used for evaluation is SumMe, which consists of 25 videos ranging from 1 to 6 minutes in duration, covering various events.
Цитати
"Our method partitions the input video into temporally consecutive segments with clustering information, enabling the injection of temporal awareness into the clustering process, setting it apart from prior cluster-based summarization methods." "Experimental results on the SumMe dataset demonstrate the effectiveness of our proposed approach, outperforming existing unsupervised methods and achieving comparable performance to state-of-the-art supervised summarization techniques."

Ключові висновки, отримані з

by Hai-Dang Huy... о arxiv.org 04-09-2024

https://arxiv.org/pdf/2404.04511.pdf
Cluster-based Video Summarization with Temporal Context Awareness

Глибші Запити

How can the proposed approach be extended to handle more complex video content, such as those with multiple events or dynamic scenes

To handle more complex video content with multiple events or dynamic scenes, the proposed approach can be extended in several ways. One approach could involve incorporating more advanced clustering algorithms that can capture the temporal relationships between frames more effectively. For instance, using hierarchical clustering techniques that consider both visual similarity and temporal proximity could help in identifying and summarizing different events within the video. Additionally, integrating attention mechanisms into the model could allow the system to focus on specific regions or events of interest, enhancing the summarization of dynamic scenes. By combining clustering with attention mechanisms, the model can adaptively select keyframes based on the importance of different events, leading to more comprehensive and coherent video summaries.

What are the potential drawbacks of relying on pre-trained models for visual embeddings, and how can the framework be made more robust to distribution mismatches

Relying solely on pre-trained models for visual embeddings may introduce potential drawbacks, especially when there is a distribution mismatch between the pre-trained model's training data and the target video dataset. This mismatch can lead to suboptimal performance and reduced generalizability of the model. To address this issue and make the framework more robust to distribution mismatches, one approach is to fine-tune the pre-trained models on a more relevant dataset that aligns better with the target video domain. Fine-tuning allows the model to adapt its learned representations to the specific characteristics of the video dataset, improving performance and robustness. Additionally, using ensemble methods with multiple pre-trained models trained on diverse datasets can help mitigate distribution mismatches and enhance the model's ability to capture a broader range of visual features.

What other unsupervised or self-supervised techniques could be explored to enhance the learning capabilities of the TAC-SUM model and improve its adaptability to diverse video domains

To enhance the learning capabilities of the TAC-SUM model and improve its adaptability to diverse video domains, exploring other unsupervised or self-supervised techniques can be beneficial. One potential approach is to incorporate contrastive learning methods, such as SimCLR or MoCo, to learn more robust and discriminative visual representations from unlabeled video data. By leveraging contrastive learning, the model can capture semantic similarities between frames and improve the clustering process for summarization. Additionally, exploring self-supervised learning techniques like temporal pretext tasks or video inpainting can help the model learn temporal dependencies and context more effectively, leading to more accurate and informative video summaries. By combining these techniques with the existing framework, the TAC-SUM model can enhance its learning capabilities and adaptability to a wide range of video content.
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