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A Methodology for Extracting Standing Human Bodies From Single Images

机译:从单幅图像中提取站立人体的方法

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摘要

Segmentation of human bodies in images is a challenging task that can facilitate numerous applications, like scene understanding and activity recognition. In order to cope with the highly dimensional pose space, scene complexity, and various human appearances, the majority of existing works require computationally complex training and template matching processes. We propose a bottom-up methodology for automatic extraction of human bodies from single images, in the case of almost upright poses in cluttered environments. The position, dimensions, and color of the face are used for the localization of the human body, construction of the models for the upper and lower body according to anthropometric constraints, and estimation of the skin color. Different levels of segmentation granularity are combined to extract the pose with highest potential. The segments that belong to the human body arise through the joint estimation of the foreground and background during the body part search phases, which alleviates the need for exact shape matching. The performance of our algorithm is measured using 40 images (43 persons) from the INRIA person dataset and 163 images from the “lab1” dataset, where the measured accuracies are 89.53% and 97.68%, respectively. Qualitative and quantitative experimental results demonstrate that our methodology outperforms state-of-the-art interactive and hybrid top-down/bottom-up approaches.
机译:图像中的人体分割是一项艰巨的任务,可以促进许多应用,例如场景理解和活动识别。为了应付高度维度的姿势空间,场景复杂性和各种人的外观,大多数现有作品需要计算复杂的训练和模板匹配过程。我们提出了一种自下而上的方法,可以在混乱的环境中以几乎直立的姿势从单个图像中自动提取人体。面部的位置,尺寸和颜色用于人体定位,根据人体测量学约束构造上,下身模型以及估计肤色。组合不同级别的细分粒度以提取具有最高潜力的姿势。通过在身体部位搜索阶段对前景和背景进行联合估计,可以得出属于人体的部分,从而无需进行精确的形状匹配。我们的算法的性能是使用INRIA人员数据集中的40张图像(43人)和“ lab1”数据集中的163张图像进行测量的,所测得的准确度分别为89.53%和97.68%。定性和定量实验结果表明,我们的方法优于最新的交互式和自上而下/自下而上的混合方法。

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