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Image Segmentation from RGBD Images by 3D Point Cloud Attributes and High-Level Features

机译:通过3D点云属性和高级功能从RGBD图像进行图像分割

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In this paper, an approach is developed for segmenting an image into major surfaces and potential objects using RGBD images and 3D point cloud data retrieved from a Kinect sensor. In the proposed segmentation algorithm, depth and RGB data are mapped together. Color, texture, XYZ world coordinates, and normal-, surface-, and graph-based segmentation index features are then generated for each pixel point. These attributes are used to cluster similar points together and segment the image. The inclusion of new depth-related features provided improved segmentation performance over RGB-only algorithms by resolving illumination and occlusion problems that cannot be handled using graph-based segmentation algorithms, as well as accurately identifying pixels associated with the main structure components of rooms (walls, ceilings, floors). Since each segment is a potential object or structure, the output of this algorithmis intended to be used for object recognition. The algorithm has been tested on commercial building images and results show the usability of the algorithm in real time applications.
机译:在本文中,开发了一种使用RGBD图像和从Kinect传感器检索到的3D点云数据将图像分割为主要表面和潜在对象的方法。在提出的分割算法中,深度和RGB数据被映射在一起。然后为每个像素点生成颜色,纹理,XYZ世界坐标以及基于法线,基于表面和基于图形的分割索引特征。这些属性用于将相似的点聚类在一起并分割图像。包含新的与深度相关的功能,通过解决无法使用基于图形的分割算法处理的照明和遮挡问题,以及准确识别与房间(墙壁)的主要结构组件相关的像素,提供了比纯RGB算法更好的分割性能。 ,天花板,地板)。由于每个段都是潜在的对象或结构,因此该算法的输出旨在用于对象识别。该算法已经在商业建筑图像上进行了测试,结果表明了该算法在实时应用中的可用性。

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