基于颜色和形状特征的家居物体识别

M. Attamimi, D. Purwanto, Rudy Dikairono
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引用次数: 0

摘要

智能机器人,如家庭服务机器人(DSR),办公机器人需要能够与动态和复杂的环境进行交互。为了在这样的环境中执行给定的任务,与对象交互的能力变得普遍。特别是,DSR需要与通常放置在家中任意位置的家用物品进行交互。为了完成这样一个具有挑战性的任务,机器人必须能够识别物体。和人类一样,基于视觉的识别对于智能机器人来说是最常见和最自然的。为了实现这种能力,使用从视觉传感器捕获的视觉信息是必要的。微软第二版Kinect (Kinect V2)可以获取颜色、深度、近红外等视觉信息。在本研究中,对捕获的视觉信息进行处理,用于目标提取和目标识别。为了解决这些问题,我们提出了一种利用颜色特征和形状特征等多种特征的方法。该方法采用一种简单的概率方法,将k近邻(kNN)等分类器的识别结果结合起来,获得对家庭物体的鲁棒识别结果。为了验证所提出的方法,我们进行了几个实验。结果表明,该方法在极端条件下对家居物品的识别准确率为(84.02±18.85)%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of Color and Shape Features for Household Object Recognition
Intelligent robots such as domestic service robots (DSR), office robots are required to be able to interact with dynamic and complex environments. In order to carry out the tasks given in such environments, the ability to interact with the objects becomes prevalent. In particular, the DSR need to interact with a household object that is normally being lied in arbitrary positions at the home. To accomplish such a challenging task, the robot has to be able to recognize the object. As human does, a visual-based recognition is most common and natural for intelligent robots. To realize such ability the use of visual information captured from a visual sensor is necessary. Thanks to the second version of Microsoft Kinect (Kinect V2), visual information such as color, depth, and near-infrared information can be acquired. In this study, the captured visual information is then processed for object extraction and object recognition. To solve the problems, we propose a method that exploits multiple features such as color and shape features. The proposed method has incorporated the results of each classifier such as k-nearest neighbor (kNN) using a simple probabilistic method to obtain robust recognition results of household objects. To validate the proposed method, we have conducted several experiments. The results reveal that our method can achieve an accuracy of (84.02 ± 18.85) % for the recognition of household objects with extreme conditions.
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