4.7 Article

Representation based regression for object distance estimation

期刊

NEURAL NETWORKS
卷 158, 期 -, 页码 15-29

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.neunet.2022.11.011

关键词

Representation-based regression; Object distance estimation; Sparse support estimation; Convolutional support estimator network

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In this study, a representation-based regression method is proposed to predict distances between detected objects in an observed scene. By improving the CSEN model and introducing compressive learning, the proxy mapping stage and convolutional layers are jointly optimized. Experimental results demonstrate the significant performance improvement of the proposed method in distance estimation.
In this study, we propose a novel approach to predict the distances of the detected objects in an observed scene. The proposed approach modifies the recently proposed Convolutional Support Estimator Networks (CSENs). CSENs are designed to compute a direct mapping for the Support Estimation (SE) task in a representation-based classification problem. We further propose and demonstrate that representation-based methods (sparse or collaborative representation) can be used in well-designed regression problems especially over scarce data. To the best of our knowledge, this is the first representation-based method proposed for performing a regression task by utilizing the modified CSENs; and hence, we name this novel approach as Representation-based Regression (RbR). The initial version of CSENs has a proxy mapping stage (i.e., a coarse estimation for the support set) that is required for the input. In this study, we improve the CSEN model by proposing Compressive Learning CSEN (CL-CSEN) that has the ability to jointly optimize the so-called proxy mapping stage along with convolutional layers. The experimental evaluations using the KITTI 3D Object Detection distance estimation dataset show that the proposed method can achieve a significantly improved distance estimation performance over all competing methods. Finally, the software implementations of the methods are publicly shared at https://github.com/meteahishali/CSENDistance.(c) 2022 The Author(s). Published by Elsevier Ltd.

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