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Object recognition in noisy RGB-D data using GNG

机译:使用GNG在嘈杂的RGB-D数据中进行对象识别

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摘要

Object recognition in 3D scenes is a research field in which there is intense activity guided by the problems related to the use of 3D point clouds. Some of these problems are influenced by the presence of noise in the cloud that reduces the effectiveness of a recognition process. This work proposes a method for dealing with the noise present in point clouds by applying the growing neural gas (GNG) network filtering algorithm. This method is able to represent the input data with the desired number of neurons while preserving the topology of the input space. The GNG obtained results which were compared with a Voxel grid filter to determine the efficacy of our approach. Moreover, since a stage of the recognition process includes the detection of keypoints in a cloud, we evaluated different keypoint detectors to determine which one produces the best results in the selected pipeline. Experiments show how the GNG method yields better recognition results than other filtering algorithms when noise is present.
机译:3D场景中的对象识别是一个研究领域,其中以与3D点云的使用有关的问题为指导,开展了很多活动。其中一些问题受到云中噪声的影响,从而降低了识别过程的效率。这项工作提出了一种通过应用增长的神经气体(GNG)网络过滤算法来处理点云中存在的噪声的方法。这种方法能够在保留输入空间拓扑的同时,以所需数量的神经元表示输入数据。 GNG获得的结果与Voxel网格过滤器进行比较,以确定我们方法的有效性。此外,由于识别过程的一个阶段包括在云中检测关键点,因此我们评估了不同的关键点检测器,以确定哪个关键点检测器在所选管道中产生最佳结果。实验表明,当存在噪声时,GNG方法如何比其他滤波算法产生更好的识别结果。

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