Towards Integrated Image Contrast Models in Segmentation of Trees

G. S. Vieira, Fabrízzio Soares, S. A. Santos, G. Laureano, J. C. Lima, R. M. Costa, J. P. Félix, T. H. Nascimento
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Abstract

Computer vision is an area in high demand which is bringing new trends for urban and rural applications. Some examples can be found in autonomous navigation projects, monitoring services, fruits/grain harvesting, pest control, and so forth. However, drastic or even unperceptive changes in the image acquisition process limit the development of these applications, especially for problems that require solutions for uncontrolled environments such as outdoor areas. Thus, the definition of what a machine is looking at is a challenging task. In this study, we dealt with the image segmentation problem in order to develop a method to delineate tree trunks, their branches, and foliage. As tree detection is a crucial topic in mobile robotics, we investigated it to give an initial interpretation of external scenes. We prepared an image dataset to validate the proposal in which two classes were defined, tree and non-tree. The pixels of each image were classified based on the proposed method, and the results show that our method obtained a positive result of 91% accuracy.
树木分割中综合图像对比度模型的研究
计算机视觉是一个高需求的领域,为城市和农村的应用带来了新的趋势。一些例子可以在自主导航项目、监测服务、水果/谷物收获、虫害防治等方面找到。然而,图像采集过程中的剧烈甚至不可感知的变化限制了这些应用的发展,特别是对于需要在室外等不受控制的环境中解决的问题。因此,定义机器正在查看的内容是一项具有挑战性的任务。在这项研究中,我们处理图像分割问题,以开发一种方法来描绘树干、树枝和树叶。由于树检测是移动机器人中的一个关键主题,我们研究它来给出外部场景的初始解释。我们准备了一个图像数据集来验证该提议,其中定义了两个类,树和非树。对每幅图像的像素进行了分类,结果表明,该方法获得了91%的正确率。
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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