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Unsupervised Object Modeling and Segmentation with Symmetry Detection for Human Activity Recognition

机译:具有人类活动识别的对称性的无监督对象建模和分段

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摘要

In this paper we present a novel unsupervised approach to detecting and segmenting objects as well as their constituent symmetric parts in an image. Traditional unsupervised image segmentation is limited by two obvious deficiencies: the object detection accuracy degrades with the misaligned boundaries between the segmented regions and the target, and pre-learned models are required to group regions into meaningful objects. To tackle these difficulties, the proposed approach aims at incorporating the pair-wise detection of symmetric patches to achieve the goal of segmenting images into symmetric parts. The skeletons of these symmetric parts then provide estimates of the bounding boxes to locate the target objects. Finally, for each detected object, the graphcut-based segmentation algorithm is applied to find its contour. The proposed approach has significant advantages: no a priori object models are used, and multiple objects are detected. To verify the effectiveness of the approach based on the cues that a face part contains an oval shape and skin colors, human objects are extracted from among the detected objects. The detected human objects and their parts are finally tracked across video frames to capture the object part movements for learning the human activity models from video clips. Experimental results show that the proposed method gives good performance on publicly available datasets.
机译:在本文中,我们提出了一种新颖的无监督方法来检测和分割图像中的对象及其组成对称部分。传统的无监督图像分割受到两个明显缺陷的限制:对象检测精度会随着分割区域和目标之间边界的未对准而降低,并且需要预先学习的模型才能将区域分组为有意义的对象。为了解决这些困难,提出的方法旨在结合对称补丁的成对检测,以达到将图像分割成对称部分的目的。然后,这些对称部分的骨骼将​​提供边界框的估计值,以定位目标对象。最后,对于每个检测到的对象,应用基于graphcut的分割算法来找到其轮廓。所提出的方法具有显着的优点:不使用先验对象模型,并且检测到多个对象。为了基于面部部分包含椭圆形和肤色的提示来验证该方法的有效性,从检测到的对象中提取了人类对象。最后,跨视频帧跟踪检测到的人体对象及其部位,以捕获物体部位的运动,以便从视频剪辑中学习人体活动模型。实验结果表明,该方法在公开数据集上具有良好的性能。

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