Journal Article10.1007/S10044-019-00804-4
3D object recognition and classification: a systematic literature review
Luis Carvalho,A. von Wangenheim +1 more
58
TL;DR: A systematic literature review concerning 3D object recognition and classification published between 2006 and 2016 is presented, using the methodology for systematic review proposed by Kitchenham.
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Abstract: In this paper, we present a systematic literature review concerning 3D object recognition and classification. We cover articles published between 2006 and 2016 available in three scientific databases (ScienceDirect, IEEE Xplore and ACM), using the methodology for systematic review proposed by Kitchenham.
Based on this methodology, we used tags and exclusion criteria to select papers about the topic under study.
After the works selection, we applied a categorization process aiming to group similar object representation types, analyzing the steps applied for object recognition, the tests and evaluation performed and the databases used.
Lastly, we compressed all the obtained information in a general overview and presented future prospects for the area.
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Citations
Review of multi-view 3D object recognition methods based on deep learning
TL;DR: A comprehensive review and classification of the latest developments in the deep learning methods for multi-view 3D object recognition is presented, which summarizes the results of these methods on a few mainstream datasets, provides an insightful summary, and puts forward enlightening future research directions.
197
Vulnerable objects detection for autonomous driving: A review
TL;DR: A comprehensive review of the state-of-the-art object detection technologies focusing on both the sensory systems and algorithms used is presented in this article, where different sensory systems employed on existing AVs are elaborated while illustrating their advantages, limitations and applications.
44
Automated Microfossil Identification and Segmentation using a Deep Learning Approach
Luis Carvalho,Gerson Fauth,S. Baecker Fauth,Guilherme Krahl,Anderson Camargo Moreira,Celso Peres Fernandes,A. von Wangenheim +6 more
TL;DR: This paper presents the first fully annotated MicroCT acquired microfossils dataset made publicly available, and proposes and validate a method for fully automated microFossil identification and segmentation.
31
•Journal Article
Modeling 3D Objects from Stereo Views and Recognizing Them in Photographs
Akash Kushal,Jean Ponce +1 more
TL;DR: A simple new method for automatically constructing 3D object models consisting of dense assemblies of small surface patches and affine-invariant descriptions of the corresponding texture patterns from a few (7 to 12) stereo pairs is proposed.
27
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