模块化可记忆性:视频可记忆性预测的分层表示

Théo Dumont, Juan Segundo Hevia, Camilo Luciano Fosco
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引用次数: 2

摘要

如何最好地估计视觉内容的可记忆性是目前在可记忆性社区中争论的一个问题。在本文中,我们建议探讨图像和视频的不同关键属性如何影响它们在记忆中的巩固。我们分析了几个特征的影响,并开发了一个模型,该模型模拟了提议的“记忆路径”的最重要部分:一个简单但有效的方法来表示新的视觉内容需要克服的不同障碍,以留在记忆中。这个框架导致了我们M3-S模型的构建,这是一个以模块化方式处理输入视频的新颖记忆网络。该网络的每个模块都模拟了通向记忆的四个关键步骤中的一个:原始编码、场景理解、事件理解和记忆巩固。我们发现我们的模块学习到的不同的表示是非平凡的,并且彼此之间有很大的不同。此外,我们观察到某些表征倾向于在记忆预测任务中比其他表征表现得更好,我们引入了一个深入的消融研究来支持我们的结果。我们提出的方法在两个最大的视频记忆数据集上超越了目前的技术水平,并为该领域的新应用打开了大门。我们的代码可在https://github.com/tekal-ai/modular-memorability上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modular Memorability: Tiered Representations for Video Memorability Prediction
The question of how to best estimate the memorability of visual content is currently a source of debate in the memorability community. In this paper, we propose to explore how different key properties of images and videos affect their consolidation into memory. We analyze the impact of several features and develop a model that emulates the most important parts of a proposed “pathway to memory”: a simple but effective way of representing the different hurdles that new visual content needs to surpass to stay in memory. This framework leads to the construction of our M3-S model, a novel memorability network that processes input videos in a modular fashion. Each module of the network emulates one of the four key steps of the pathway to memory: raw encoding, scene understanding, event understanding and memory consolidation. We find that the different representations learned by our modules are non-trivial and substantially different from each other. Additionally, we observe that certain representations tend to perform better at the task of memorability prediction than others, and we introduce an in-depth ablation study to support our results. Our proposed approach surpasses the state of the art on the two largest video memorability datasets and opens the door to new applications in the field. Our code is available at https://github.com/tekal-ai/modular-memorability.
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