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首页> 外文期刊>EURASIP journal on image and video processing >Coarse-to-fine online learning for hand segmentation in egocentric video
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Coarse-to-fine online learning for hand segmentation in egocentric video

机译:在Egocentric视频中粗略于在线学习手部分割

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摘要

Abstract Hand segmentation is one of the most fundamental and crucial steps for egocentric human-computer interaction. The special egocentric view brings new challenges to hand segmentation tasks, such as the unpredictable environmental conditions. The performance of traditional hand segmentation methods depend on abundant manually labeled training data. However, these approaches do not appropriately capture the whole properties of egocentric human-computer interaction for neglecting the user-specific context. It is only necessary to build a personalized hand model of the active user. Based on this observation, we propose an online-learning hand segmentation approach without using manually labeled data for training. Our approach consists of top-down classifications and bottom-up optimizations. More specifically, we divide the segmentation task into three parts, a frame-level hand detection which detects the presence of the interactive hand using motion saliency and initializes hand masks for online learning, a superpixel-level hand classification which coarsely segments hand regions from which stable samples are selected for next level, and a pixel-level hand classification which produces a fine-grained hand segmentation. Based on the pixel-level classification result, we update the hand appearance model and optimize the upper layer classifier and detector. This online-learning strategy makes our approach robust to varying illumination conditions and hand appearances. Experimental results demonstrate the robustness of our approach.
机译:摘要手分割是Egentric人机互动最基本和最重要的步骤之一。特殊的Enocentric View为手部分割任务带来了新的挑战,例如不可预测的环境条件。传统手部分割方法的性能取决于丰富的手动标记的训练数据。然而,这些方法没有适当地捕获Egentric人机交互的整个性质,以忽略特定的用户的上下文。只有需要构建活动用户的个性化手机模型。基于此观察,我们提出了一种在线学习手部分割方法,而无需使用手动标记的数据进行培训。我们的方法包括自上而下的分类和自下而上的优化。更具体地说,我们将分割任务划分为三个部分,帧级手检测,它使用运动显着性检测互动手的存在,并初始化手部掩模进行在线学习,这是一种超级倍数级手分类,粗略地分段选择稳定的样品用于下一级别,以及产生细粒细粒分割的像素级手分类。基于像素级分类结果,我们更新手外观模型并优化上层分类器和检测器。该在线学习策略使我们的方法变得更加强大,以不同的照明条件和手表出现。实验结果表明了我们方法的稳健性。

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