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Scalable Operators for Feature Extraction on 3-D Data

机译:用于3D数据特征提取的可扩展运算符

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摘要

Real-time extraction of features from range images can play an important role in robotic vision tasks such as localisation and navigation. Feature driven segmentation of range images has been primarily used for 3D object recognition, and hence the accuracy of the detected features is a prominent issue. Feature extraction on range data has proven to be a more complex problem than on intensity images due to both the irregular distribution of range images. This paper presents a general approach to the development of scalable derivative operators using a finite element framework that can be applied directly to processing regularly or irregularly distributed range image data. The gradient operators of varying scales are evaluated with respect to their performance on regular and irregular grids.
机译:从距离图像中实时提取特征可以在机器人视觉任务(例如定位和导航)中发挥重要作用。特征驱动的距离图像分割主要用于3D对象识别,因此,检测到的特征的准确性是一个突出的问题。由于距离图像的不规则分布,事实证明距离数据的特征提取比强度图像上的问题更为复杂。本文提出了一种使用有限元框架开发可伸缩导数算子的通用方法,该框架可以直接应用于处理规则或不规则分布的范围图像数据。根据其在规则和不规则网格上的性能,评估了不同比例的梯度算子。

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