Outdoor scene image segmentgation using statistical region merging

A. N. Kumar, C. Jothilakshmi, M. Ilamathi, S. Kalaiselvi
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Abstract

A new loom of outdoor scene image segmentation algorithm is based on the region amalgamation. Here we are going to identify both structured (e.g. buildings, persons, car, etc.) and unstructured background objects (sky, road, grass, etc.) which are containing the some characteristic based on color, intensity, and texture in sequence. Our main aim is to solve the over segmented objects and strong reflection of objects. These problems are solved by using SRM (Statistical Region Merging) algorithm. In pre-processing the input image is converted into CIE (Commission Internationalde Eclairage) color space technique. Then bottom-up segmentation process is used to capture the structured and unstructured image characteristics. Another process is the Ada boost classifier which is used to classify the background objects in outdoor environment scenes. Ada boost is focused on difficult patterns. Then the contour maps are used to detect the boundary energy. Boundary detection test is the grouping of objects with a pair of connected neighboring regions. In this paper we have used an experimental result of two databases (Gould data set and Berkeley segmentation data set) and provide accurate segmentation using region merging. Finally the statistical region merging provides the groupings of images to identify the computer vision.
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基于统计区域合并的室外场景图像分割
提出了一种基于区域融合的户外场景图像分割算法。在这里,我们将识别结构化(例如建筑物,人物,汽车等)和非结构化背景对象(天空,道路,草地等),它们包含基于颜色,强度和纹理的一些特征。我们的主要目标是解决物体的过度分割和物体的强反射。采用统计区域合并(SRM)算法解决了这些问题。在预处理中,输入的图像被转换成CIE (Commission Internationalde Eclairage)色彩空间技术。然后采用自底向上的分割方法捕获结构化和非结构化图像特征。另一个过程是Ada boost分类器,用于对室外环境场景中的背景物体进行分类。阿达提升专注于困难的模式。然后利用等高线图检测边界能量。边界检测测试是用一对相连的相邻区域对目标进行分组。本文利用两个数据库(Gould数据集和Berkeley分割数据集)的实验结果,采用区域合并的方法实现了精确的分割。最后,统计区域合并为计算机视觉识别提供图像分组。
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