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Unsupervised Feature Selection via Distributed Coding for Multi-view Object Recognition

机译:通过分布式编码进行多视图对象识别的无监督功能选择

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Object recognition accuracy can be improved when information from multiple views is integrated, but information in each view can often be highly redundant. We consider the problem of distributed object recognition or indexing from multiple cameras, where the computational power available at each camera sensor is limited and communication between cameras is prohibitively expensive. In this scenario, it is desirable to avoid sending redundant visual features from multiple views. Traditional supervised feature selection approaches are inapplicable as the class label is unknown at each camera. In this paper we propose an unsupervised multi-view feature selection algorithm based on a distributed coding approach. With our method, a Gaussian Process model of the joint view statistics is used at the receiver to obtain a joint encoding of the views without directly sharing information across encoders. We demonstrate our approach on recognition and indexing tasks with multi-view image databases and show that our method compares favorably to an independent encoding of the features from each camera.
机译:当集成多个视图的信息时,可以提高对象识别准确性,但每个视图中的信息通常可以高度冗余。我们考虑来自多个摄像机的分布式物体识别或索引的问题,其中每个摄像机传感器的计算功率有限,并且摄像机之间的通信非常昂贵。在这种情况下,期望避免从多个视图发送冗余的视觉功能。传统的监督特征选择方法可不适用,因为每个相机在类标签未知。本文提出了一种基于分布式编码方法的无监督多视图特征选择算法。利用我们的方法,接收器使用关节视图统计的高斯进程模型,以获得视图的联合编码,而无需直接在编码器中共享信息。我们在具有多视图图像数据库的识别和索引任务上展示了我们的方法,并显示了我们的方法对来自每种相机的特征的独立编码有利地进行比较。

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