Semi-supervised classification of static canine postures using the Microsoft Kinect

Sean P. Mealin, Ignacio X. Domínguez, D. Roberts
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引用次数: 24

Abstract

3D sensing hardware, such as the Microsoft Kinect, allows new interaction paradigms that would be difficult to accomplish with traditional RGB cameras alone. One basic step in realizing these new methods of animal-computer interaction is posture and behavior detection and classification. In this paper, we present a system capable of identifying static postures for canines that does not rely on hand-labeled data at any point during the process. We create a model of the canine based on measurements automatically obtained in from the first few captured frames, reducing the burden on users. We also present a preliminary evaluation of the system with five dogs, which shows that the system can identify the "standing," "sitting," and "lying" postures with approximately 70%, 69%, and 94% accuracy, respectively.
使用微软Kinect对静态犬类姿势进行半监督分类
3D传感硬件,如微软Kinect,允许新的交互模式,这将很难完成传统的RGB相机单独。实现这些动物与计算机交互新方法的一个基本步骤是姿态和行为的检测和分类。在本文中,我们提出了一个能够识别犬类静态姿势的系统,该系统在此过程中的任何一点都不依赖于手工标记的数据。我们基于从捕获的前几帧自动获得的测量值来创建犬类的模型,从而减轻用户的负担。我们还用五只狗对该系统进行了初步评估,结果表明,该系统可以识别“站立”、“坐着”和“躺着”的姿势,准确率分别约为70%、69%和94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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