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A correlation based feature representation for first-person activity recognition

机译:基于相关的第一人称活动识别特征表示

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摘要

In this paper, a simple yet efficient activity recognition method for first-person video is introduced. The proposed method is appropriate for the representation of high-dimensional features such as those extracted from convolutional neural networks (CNNs). The per-frame (per-segment) extracted features are considered as a set of time series, and inter and intra-time series relations are employed to represent the video descriptors. To find the inter-time relations, the series are grouped and the linear correlation between each pair of groups is calculated. The relations between them can represent the scene dynamics and local motions. The introduced grouping strategy helps to considerably reduce the computational cost. Furthermore, we split the series in thetemporal direction in order to preserve long term motions and better focus on each local time window. In order to extract the cyclic motion patterns, which can be considered as primary components of various activities, intra-time series correlations are exploited. The representation method results in highly discriminative features which can be linearly classified. The experiments confirm that our method outperforms the state-of-the-art methods in recognizing first-person activities on the three challenging first-person datasets.
机译:本文介绍了一种简单而有效的第一人称视频的简单且高效的活动识别方法。所提出的方法适用于从卷积神经网络中提取的高维特征的表示(CNNS)。每个帧(每个段)提取的特征被认为是一组时间序列,并且采用帧间和帧内序列关系来表示视频描述符。为了找到间隔相互关系,该系列被分组,计算每对组之间的线性相关性。它们之间的关系可以代表场景动态和本地运动。介绍的分组策略有助于大大降低计算成本。此外,我们在轮廓方向上拆分串联,以保持长期动作,更好地关注每个当地时间窗口。为了提取可以被认为是各种活动的主要分量的循环运动模式,利用时间内相关的序列相关性。表示方法导致可以线性分类的高度辨别特征。实验证实,我们的方法优于最先进的方法,以认识到三个具有挑战性的第一人称数据集的第一人称活动。

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