2017
DOI: 10.3390/s17030594
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Voxel-Based Neighborhood for Spatial Shape Pattern Classification of Lidar Point Clouds with Supervised Learning

Abstract: Improving the effectiveness of spatial shape features classification from 3D lidar data is very relevant because it is largely used as a fundamental step towards higher level scene understanding challenges of autonomous vehicles and terrestrial robots. In this sense, computing neighborhood for points in dense scans becomes a costly process for both training and classification. This paper proposes a new general framework for implementing and comparing different supervised learning classifiers with a simple voxe… Show more

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Cited by 21 publications
(11 citation statements)
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References 41 publications
(92 reference statements)
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“…To increase the output rate, the calculation of the FEM and the FRM has been parallelized into two threads inside the Map node by separating the calculation of Equation (8) to that of Equation (9). For further improvement, the Map node can be launched two or more times working on different 3D point clouds.…”
Section: Multithreaded Computation Of Fems and Frmsmentioning
confidence: 99%
See 1 more Smart Citation
“…To increase the output rate, the calculation of the FEM and the FRM has been parallelized into two threads inside the Map node by separating the calculation of Equation (8) to that of Equation (9). For further improvement, the Map node can be launched two or more times working on different 3D point clouds.…”
Section: Multithreaded Computation Of Fems and Frmsmentioning
confidence: 99%
“…In urban areas and indoors, processing of laser information can benefit from the recognition of common geometric features, such as planes [7]. Natural terrain classification can be performed by computing saliency features that capture the local spatial distribution of 3D points [8,9].…”
Section: Introductionmentioning
confidence: 99%
“…Hence, we compare the model to a representation learning technique, and once to a non-representation learning technique. In doing so, we report the average precision [99], average recall [99], average F1 score [99,100], average accuracy, overall accuracy [101], kappa score [102], Matthew's Correlation Coefficient (MCC) [103,104], and confusion matrices. We use the Minkowski Engine [91], which is built on top of PyTorch [105], for training the GSCNN.…”
Section: Introductionmentioning
confidence: 99%
“…A variety of machine learning techniques have been applied to classify 3D point clouds [9]. In addition, supervised machine learning is utilized by presenting prelabeled examples to obtain useful predictive models that can be applied to new data [10,11]. Especially in the last few years, neural networks have been the basis of the methods used by advanced computer vision algorithms in many areas such as classification [12], segmentation [13] and target detection [14].…”
Section: Introductionmentioning
confidence: 99%