论文标题
研究形状特征,颜色恒定,颜色空间和相似性度量的重要性
Investigating the Importance of Shape Features, Color Constancy, Color Spaces and Similarity Measures in Open-Ended 3D Object Recognition
论文作者
论文摘要
尽管最新的3D对象识别方法最近取得了成功,但服务机器人经常在实际以人为中心的环境中识别许多对象。对于这些机器人,由于在变化和不可预测的环境条件下对准确和实时响应的需求很高,因此对象识别是一项具有挑战性的任务。最近的大多数方法仅使用形状信息,而忽略了颜色信息的作用,反之亦然。此外,他们主要利用$ L_N $ Minkowski系列功能来测量两个对象视图的相似性,而有各种距离测量可用于比较两个对象视图。在本文中,我们探讨了形状信息,颜色恒定,颜色空间以及开放式3D对象识别中各种相似性度量的重要性。为了实现这一目标,我们在三种不同的配置中广泛评估了对象识别方法的性能,包括\ textIt {folly-folly},\ textit {shape-lyly}和\ textit {color and shape}的组合,在离线和在线设置中。有关可伸缩性,内存使用和对象识别性能的实验结果表明,所有\ textIt {颜色和形状的组合}对\ textit {shape-onshy-only}和\ textit {color-only}方法都具有显着改进。根本原因是颜色信息是区分具有不同颜色的几何特性的对象,反之亦然。此外,通过结合颜色和形状信息,我们证明了机器人可以在现实世界中很少的培训示例中学习新对象类别。
Despite the recent success of state-of-the-art 3D object recognition approaches, service robots are frequently failed to recognize many objects in real human-centric environments. For these robots, object recognition is a challenging task due to the high demand for accurate and real-time response under changing and unpredictable environmental conditions. Most of the recent approaches use either the shape information only and ignore the role of color information or vice versa. Furthermore, they mainly utilize the $L_n$ Minkowski family functions to measure the similarity of two object views, while there are various distance measures that are applicable to compare two object views. In this paper, we explore the importance of shape information, color constancy, color spaces, and various similarity measures in open-ended 3D object recognition. Towards this goal, we extensively evaluate the performance of object recognition approaches in three different configurations, including \textit{color-only}, \textit{shape-only}, and \textit{ combinations of color and shape}, in both offline and online settings. Experimental results concerning scalability, memory usage, and object recognition performance show that all of the \textit{combinations of color and shape} yields significant improvements over the \textit{shape-only} and \textit{color-only} approaches. The underlying reason is that color information is an important feature to distinguish objects that have very similar geometric properties with different colors and vice versa. Moreover, by combining color and shape information, we demonstrate that the robot can learn new object categories from very few training examples in a real-world setting.