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Segmentation and scene modeling for MIL-based target localization

机译:基于MIL的目标定位的分割和场景建模

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Existing techniques for object tracking with Multiple Instance Learning take the approach of extracting low-level patches of fixed size and aspect ratios within each image, and employ many simplistic assumptions. In this work, we propose an approach that automatically utilizes image segments as input primitives to develop a multi-level segmentation-based system, and build a target model refinement procedure that learns the optimal model corresponding to the target object. To go beyond existing restrictive assumptions, we further develop automatic scene environmental models to assign prior probabilities to segment instances of belonging to the target vs scene. We demonstrate impressive qualitative and quantitative results with tracking sequences in typical outdoor surveillance settings.
机译:用于多实例学习的对象跟踪的现有技术采用的方法是在每幅图像中提取固定大小和长宽比的低级补丁,并采用许多简化的假设。在这项工作中,我们提出了一种方法,该方法可自动利用图像片段作为输入基元来开发基于多层次分割的系统,并建立一种目标模型优化程序,以学习与目标对象相对应的最佳模型。为了超越现有的限制性假设,我们进一步开发了自动场景环境模型,以分配先验概率以分割属于目标与场景的实例。在典型的室外监视环境中,我们通过跟踪序列展示出令人印象深刻的定性和定量结果。

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