Segmenting color images into surface patches by exploiting sparse depth data

B. Dellen, G. Alenyà, S. Foix, C. Torras
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引用次数: 18

Abstract

We present a new method for segmenting color images into their composite surfaces by combining color segmentation with model-based fitting utilizing sparse depth data, acquired using time-of-flight (Swissranger, PMD CamCube) and stereo techniques. The main target of our work is the segmentation of plant structures, i.e., leaves, from color-depth images, and the extraction of color and 3D shape information for automating manipulation tasks. Since segmentation is performed in the dense color space, even sparse, incomplete, or noisy depth information can be used. This kind of data often represents a major challenge for methods operating in the 3D data space directly. To achieve our goal, we construct a three-stage segmentation hierarchy by segmenting the color image with different resolutions-assuming that “true” surface boundaries must appear at some point along the segmentation hierarchy. 3D surfaces are then fitted to the color-segment areas using depth data. Those segments which minimize the fitting error are selected and used to construct a new segmentation. Then, an additional region merging and a growing stage are applied to avoid over-segmentation and label previously unclustered points. Experimental results demonstrate that the method is successful in segmenting a variety of domestic objects and plants into quadratic surfaces. At the end of the procedure, the sparse depth data is completed using the extracted surface models, resulting in dense depth maps. For stereo, the resulting disparity maps are compared with ground truth and the average error is computed.
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利用稀疏深度数据将彩色图像分割成表面小块
我们提出了一种将彩色图像分割成其复合表面的新方法,该方法将颜色分割与基于模型的拟合相结合,利用稀疏深度数据,使用飞行时间(Swissranger, PMD CamCube)和立体技术获得。我们工作的主要目标是从颜色深度图像中分割植物结构,即叶子,并提取颜色和3D形状信息以实现自动化操作任务。由于分割是在密集的色彩空间中进行的,因此即使是稀疏的、不完整的或有噪声的深度信息也可以使用。这类数据通常对直接在3D数据空间中操作的方法构成重大挑战。为了实现我们的目标,我们通过对不同分辨率的彩色图像进行分割来构建一个三阶段的分割层次结构——假设“真实”的表面边界必须出现在分割层次结构的某个点上。然后使用深度数据将3D表面拟合到颜色分段区域。选取拟合误差最小的段,构建新的分段。然后,采用额外的区域合并和生长阶段来避免过度分割和标记先前未聚类的点。实验结果表明,该方法能够成功地将各种家用物体和植物分割成二次曲面。在程序的最后,使用提取的表面模型完成稀疏深度数据,得到密集深度图。对于立体,将得到的视差图与地面真值进行比较,并计算平均误差。
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