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Detangling People: Individuating Multiple Close People and Their Body Parts via Region Assembly

机译:纠缠人员:通过区域装配将多个密友及其身体部位个性化

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Todays person detection methods work best when people are in common upright poses and appear reasonably well spaced out in the image. However, in many real images, thats not what people do. People often appear quite close to each other, e.g., with limbs linked or heads touching, and their poses are often not pedestrian-like. We propose an approach to detangle people in multi-person images. We formulate the task as a region assembly problem. Starting from a large set of overlapping regions from body part semantic segmentation and generic object proposals, our optimization approach reassembles those pieces together into multiple person instances. Since optimal region assembly is a challenging combinatorial problem, we present a Lagrangian relaxation method to accelerate the lower bound estimation, thereby enabling a fast branch and bound solution for the global optimum. As output, our method produces a pixel-level map indicating both 1) the body part labels (arm, leg, torso, and head), and 2) which parts belong to which individual person. Our results on challenging datasets show our method is robust to clutter, occlusion, and complex poses. It outperforms a variety of competing methods, including existing detector CRF methods and region CNN approaches. In addition, we demonstrate its impact on a proxemics recognition task, which demands a precise representation of whose body part is where in crowded images.
机译:当人们处于常见的直立姿势并在图像中合理间隔开时,当今的人检测方法最有效。但是,在许多真实的图像中,这并不是人们的工作。人们经常显得非常接近,例如,四肢相连或头部碰触,而且他们的姿势通常不像行人。我们提出了一种在多人图像中对人进行纠缠的方法。我们将任务表述为区域装配问题。从身体部位语义分割和通用对象建议的大量重叠区域开始,我们的优化方法将这些片段重新组合为多个人实例。由于最优区域组装是一个具有挑战性的组合问题,因此我们提出了一种拉格朗日松弛方法来加速下界估计,从而为全局最优实现快速的分支定界解决方案。作为输出,我们的方法生成一个像素级映射,该映射指示1)身体部位标签(手臂,腿,躯干和头部),以及2)哪些部位属于哪个个人。我们在具有挑战性的数据集上的结果表明,我们的方法对于杂乱,遮挡和复杂的姿势具有鲁棒性。它优于各种竞争方法,包括现有的探测器CRF方法和区域CNN方法。此外,我们演示了它对近距离识别任务的影响,该任务要求精确表示其身体部位在拥挤图像中的位置。

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