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Behavior Recognition in Mouse Videos using Contextual Features Encoded by Spatial-temporal Stacked Fisher Vectors

机译:使用Spatial-Temporal Stacked Fisher向量编码的上下文功能的鼠标视频中的行为识别

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Manual measurement of mouse behavior is highly labor intensive and prone to error. This investigation aims to efficiently and accurately recognize individual mouse behaviors in action videos and continuous videos. In our system each mouse action video is expressed as the collection of a set of interest points. We extract both appearance and contextual features from the interest points collected from the training datasets, and then obtain two Gaussian Mixture Model (GMM) dictionaries for the visual and contextual features. The two GMM dictionaries are leveraged by our spatial-temporal stacked Fisher Vector (FV) to represent each mouse action video. A neural network is used to classify mouse action and finally applied to annotate continuous video. The novelty of our proposed approach is: (i) our method exploits contextual features from spatio-temporal interest points, leading to enhanced performance, (ii) we encode contextual features and then fuse them with appearance features, and (iii) location information of a mouse is extracted from spatio-temporal interest points to support mouse behavior recognition. We evaluate our method against the database of Jhuang et al. (Jhuang et al., 2010) and the results show that our method outperforms several state-of-the-art approaches.
机译:手动测量鼠标行为是高度劳动密集的,容易出错。该调查旨在有效,准确地识别行动视频和连续视频中的个别鼠标行为。在我们的系统中,每个鼠标动作视频都表示为一组兴趣点的集合。我们从训练数据集收集的兴趣点提取外观和上下文特征,然后获得用于视觉和上下文特征的两个高斯混合模型(GMM)字典。两个GMM字典由我们的空间堆叠Fisher向量(FV)杠杆杠杆化以表示每种鼠标动作视频。神经网络用于对鼠标动作进行分类,最后应用于涂布连续视频。我们提出的方法的新颖性是:(i)我们的方法利用时空兴趣点的上下文特征,导致增强的性能,(ii)我们编码上下文功能,然后用外观特征熔断它们,(iii)位置信息从时空兴趣点中提取鼠标以支持鼠标行为识别。我们评估我们对jhuang等人的数据库的方法。 (jhuang等,2010)和结果表明,我们的方法优于几种最先进的方法。

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