基于分割区域和多特征的室外环境目标识别

Dae-Nyeon Kim, Hyun-Deok Kang, Taeho Kim, K. Jo
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引用次数: 3

摘要

提出了六特征、颜色、边缘、直线、几何信息、树色模板等区域分割方法。该方法对安装在移动机器人上的CCD摄像机获取的图像进行区域分割。移动机器人在室外环境下拍摄数据库图像。我们将物体分为自然的和人工的,然后分别定义它们的特征。在此过程中,我们通过预处理对包含对象的区域进行分割。当我们将预定义的多个特征组合在一起时,就可以识别出目标。此外,XCM (X共现矩阵)的特征检测树的区域,其中X是任意的信息,如强度或色调。这些特性使用XCM以及我们定义的五个特性。由于我们提出了一种结合复杂图像中各种特征的方法,因此该方法比传统的室外环境区域分割方法更有效。通过实验得到了多特征的区域分割结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Recognition using Segmented Region and Multiple Features on Outdoor Environments
This paper presents the method of region segmentation like six features, color, edge, straight line, geometric information, and template of tree color. The proposition of method segments region of image which is obtained by CCD camera mounted on the mobile robot. Moving robot takes database images on outdoor environment. We classify object to natural and artificial and then define their characteristics individually. In the process, we segment regions included objects by preprocessing. Objects can be recognized when we combine predefined multiple features. In addition, the feature of XCM (X co-occurrence matrix) detect region of tree, where X is information of arbitrary like intensity or hue. So the features use XCM as well as five features which we define. Our method is more effective than conventional region segmentation on outdoor environment because we present the method to combine various features in complex image. We achieved the result of region segmentation using multiple features through experiments.
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