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Q-Learning of Sequential Attention for Visual Object Recognition from Informative Local Descriptors

机译:Q-Learning对信息识别信息的顺序关注来自信息性的本地描述符

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This work provides a framework for learning sequential attention in real-world visual object recognition, using an architecture of three processing stages. The first stage rejects irrelevant local descriptors based on an information theoretic saliency measure, providing candidates for foci of interest (FOI). The second stage investigates the information in the FOI using a codebook matcher and providing weak object hypotheses. The third stage integrates local information via shifts of attention, resulting in chains of descriptor-action pairs that characterize object discrimination. A Q-learner adapts then from explorative search and evaluative feedback from entropy decreases on the attention sequences, eventually prioritizing shifts that lead to a geometry of descriptor-action scan-paths that is highly discriminative with respect to object recognition. The methodology is successfully evaluated on indoors (COIL-20 database) and outdoors (TSG-20 database) imagery, demonstrating significant impact by learning, outperforming standard local descriptor based methods both in recognition accuracy and processing time.
机译:这项工作提供了一个框架,用于使用三个处理阶段的架构来在真实的视觉对象识别中学习顺序关注。第一阶段基于信息理论显着性措施来拒绝无关的本地描述符,为感兴趣的焦点提供候选者(FOI)。第二阶段使用码本匹配器调查FOI中的信息并提供弱对象假设。第三阶段通过关注的偏移集成了本地信息,从而导致描述对象辨别的描述符-action对的链条。 Q-Learner以及从熵的探索性搜索和评估反馈从熵的搜索和评估反馈中的注意力序列的降低,最终优先顺序排序,该换档导致对对象识别的高度判别的描述符 - 动作扫描路径的几何形状。在室内(线圈-20数据库)和户外(TSG-20数据库)图像上成功评估了方法,通过学习,表现出基于标准的本地描述符在识别准确性和处理时间的情况下表现出显着影响。

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