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A “string of feature graphs” model for recognition of complex activities in natural videos

机译:用于识别自然视频中复杂活动的“特征图字符串”模型

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Videos usually consist of activities involving interactions between multiple actors, sometimes referred to as complex activities. Recognition of such activities requires modeling the spatio-temporal relationships between the actors and their individual variabilities. In this paper, we consider the problem of recognition of complex activities in a video given a query example. We propose a new feature model based on a string representation of the video which respects the spatio-temporal ordering. This ordered arrangement of local collections of features (e.g., cuboids, STIP), which are the characters in the string, are initially matched using graph-based spectral techniques. Final recognition is obtained by matching the string representations of the query and the test videos in a dynamic programming framework which allows for variability in sampling rates and speed of activity execution. The method does not require tracking or recognition of body parts, is able to identify the region of interest in a cluttered scene, and gives reasonable performance with even a single query example. We test our approach in an example-based video retrieval framework with two publicly available complex activity datasets and provide comparisons against other methods that have studied this problem.
机译:视频通常由涉及多个参与者之间互动的活动组成,有时也称为复杂活动。对此类活动的认识需要对参与者及其个体变异之间的时空关系进行建模。在本文中,我们通过给出查询示例来考虑视频中复杂活动的识别问题。我们提出了一种基于视频字符串表示的新特征模型,该模型尊重时空顺序。最初使用基于图的光谱技术匹配作为字符串中字符的局部特征(例如长方体,STIP)的本地集合的这种有序排列。通过在动态编程框架中匹配查询和测试视频的字符串表示形式来获得最终识别,该框架允许采样率和活动执行速度的变化。该方法不需要跟踪或识别身体部位,能够识别杂乱场景中的感兴趣区域,并且即使使用单个查询示例也可以提供合理的性能。我们在一个基于示例的视频检索框架中测试了我们的方法,该框架具有两个公共可用的复杂活动数据集,并与研究此问题的其他方法进行了比较。

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