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Joint Segmentation of Images and Scanned Point Cloud in Large-Scale Street Scenes With Low-Annotation Cost

机译:低注释成本的大规模街道场景中图像和扫描点云的联合分割

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摘要

We propose a novel method for the parsing of images and scanned point cloud in large-scale street environment. The proposed method significantly reduces the intensive labeling cost in previous works by automatically generating training data from the input data. The automatic generation of training data begins with the initialization of training data with weak priors in the street environment, followed by a filtering scheme to remove mislabeled training samples. We formulate the filtering as a binary labeling optimization problem over a conditional random filed that we call object graph, simultaneously integrating spatial smoothness preference and label consistency between 2D and 3D. Toward the final parsing, with the automatically generated training data, a CRF-based parsing method that integrates the coordination of image appearance and 3D geometry is adopted to perform the parsing of large-scale street scenes. The proposed approach is evaluated on city-scale Google Street View data, with an encouraging parsing performance demonstrated.
机译:我们提出了一种在大型街道环境中解析图像和扫描点云的新颖方法。通过从输入数据自动生成训练数据,该方法大大降低了以前工作中的密集标签成本。训练数据的自动生成始于在街道环境中先验条件较弱的训练数据的初始化,然后是过滤方案以去除贴错标签的训练样本。我们将过滤条件公式化为一个称为对象图的条件随机场上的二进制标签优化问题,同时将空间平滑度偏好和2D和3D之间的标签一致性集成在一起。在最终解析的过程中,利用自动生成的训练数据,采用了基于CRF的解析方法,该方法将图像外观和3D几何的协调性结合在一起,以进行大规模街道场景的解析。在城市规模的Google Street View数据上对提出的方法进行了评估,并证明了令人鼓舞的解析性能。

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