用于机器人的图像特征提取算法:区域特征案例

Dafizal Derawi, Nurul Dayana Salim, H. Zamzuri, Mohd Azizi Abdul Rahman, K. Nonami
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引用次数: 0

摘要

提出了一种适用于机器人的图像特征提取算法。该方法对场景光照变化、视点变化、镜面、色彩饱和度、图像不完全聚焦和阴影具有较强的鲁棒性。该算法采用自底向上的方法,包括三个阶段:颜色分类、校正和描述。在色彩分类阶段,利用色度(CIE Lab色彩空间)对彩色图像进行分割,以检测潜在的彩色区域。在校正阶段采用阈值分割和多种形态学运算来消除噪声像素。最后,利用矩量法识别目标的图像特征(面积、位置和方向)。结果说明了所涉及的每个操作,并证明了所提出的图像特征提取算法的性能。总的来说,该方法适用于已知的操作环境,即机器人在预定义的工作空间中操作,并且具有目标的先验知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image feature extraction algorithm for robotic applications: Region features case
This paper presents an image feature extraction algorithm for robotic applications. The proposed method robust against scene illumination change, viewpoint change, specularity, colour saturation, imperfect focus of image, and shadows. The proposed algorithm is a bottom up approach which consists of three phases: colour classification, correction, and description. In colour classification phase, chrominance (CIE Lab colour space) is used to segment coloured images in order to detect potential coloured region. Thresholding and several morphological operations are applied in correction phase in order to eliminate the noise pixels. Finally, moment method is used to identify the desired image features (area, position and orientation) of targets. The results are presented to illustrate each operations involved and demonstrate the performance of proposed image feature extraction algorithm. Overall, the proposed method is suitable for known operating environment cases where a robot operates in predefined workspace with prior knowledge of target.
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