Efficient 3D Objects Recognition Using Multifoveated Point Clouds.
Fabio Fonseca de Oliveira,Anderson Souza,Marcelo A. C. Fernandes,Rafael Beserra Gomes,Luiz Marcos Garcia Gonçalves +4 more
12
TL;DR: This work proposes a new solution for data reduction and feature detection using multifoveation in the point cloud that can be used to identify objects in 3D point clouds with efficient synchronization allowing the validation of the model and verification of its applicability in the context of computer vision.
read more
Abstract: Technological innovations in the hardware of RGB-D sensors have allowed the acquisition of 3D point clouds in real time. Consequently, various applications have arisen related to the 3D world, which are receiving increasing attention from researchers. Nevertheless, one of the main problems that remains is the demand for computationally intensive processing that required optimized approaches to deal with 3D vision modeling, especially when it is necessary to perform tasks in real time. A previously proposed multi-resolution 3D model known as foveated point clouds can be a possible solution to this problem. Nevertheless, this is a model limited to a single foveated structure with context dependent mobility. In this work, we propose a new solution for data reduction and feature detection using multifoveation in the point cloud. Nonetheless, the application of several foveated structures results in a considerable increase of processing since there are intersections between regions of distinct structures, which are processed multiple times. Towards solving this problem, the current proposal brings an approach that avoids the processing of redundant regions, which results in even more reduced processing time. Such approach can be used to identify objects in 3D point clouds, one of the key tasks for real-time applications as robotics vision, with efficient synchronization allowing the validation of the model and verification of its applicability in the context of computer vision. Experimental results demonstrate a performance gain of at least 27.21% in processing time while retaining the main features of the original, and maintaining the recognition quality rate in comparison with state-of-the-art 3D object recognition methods.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
High-Level Path Planning for an Autonomous Sailboat Robot Using Q-Learning
Andouglas Goncalves da Silva Junior,Davi Henrique dos Santos,Alvaro Pinto Fernandes de Negreiros,João Moreno Vilas Boas de Souza Silva,Luiz Marcos Garcia Gonçalves +4 more
TL;DR: The development of a complete path planner algorithm that, together with the local planner solved in previous work, can be used to allow the final developments of an N-Boat making it a fully autonomous sailboat.
45
Reconstruction of 3D Object Shape Using Hybrid Modular Neural Network Architecture Trained on 3D Models from ShapeNetCore Dataset.
TL;DR: A novel hybrid modular artificial neural network architecture, which can reconstruct smooth polygonal meshes from a single depth frame, using a priori knowledge is proposed, allowing for easy retraining and extension for new object types.
31
RGB-D Object Recognition Using Multi-Modal Deep Neural Network and DS Evidence Theory
TL;DR: A multi-modal deep neural network and a DS evidence theory based decision fusion method is used for integrating the two classification results and both the discriminative information of each modality and the correlation information between the two modalities are exploited.
21
Smart Artificial Markers for Accurate Visual Mapping and Localization.
Luis E. Ortiz-Fernandez,Elizabeth V. Cabrera-Avila,Bruno Marques Ferreira da Silva,Luiz Marcos Garcia Gonçalves +3 more
TL;DR: In this article, a smart marker consisting of a square fiducial planar marker and a pose measurement system (PMS) unit is used to estimate the markers' poses from calibrated images and orientation/distance measurements gathered from the PMS unit.
19
Multi-Set Canonical Correlation Analysis for 3D Abnormal Gait Behaviour Recognition Based on Virtual Sample Generation
Jian Luo,Tardi Tjahjadi +1 more
TL;DR: 3D AGBR based on VSG and multi-set canonical correlation analysis (3D-AGRBMCCA) is proposed and experiments show the proposed system performs well under various conditions.
References
Using spin images for efficient object recognition in cluttered 3D scenes
Andrew E. Johnson,Martial Hebert +1 more
TL;DR: In this paper, a 3D shape-based object recognition system for simultaneous recognition of multiple objects in scenes containing clutter and occlusion is presented, which is based on matching surfaces by matching points using the spin image representation.
Unique signatures of histograms for local surface description
Federico Tombari,Samuele Salti,Luigi Di Stefano +2 more
- 05 Sep 2010
TL;DR: A novel comprehensive proposal for surface representation is formulated, which encompasses a new unique and repeatable local reference frame as well as a new 3D descriptor.
A large-scale hierarchical multi-view RGB-D object dataset
Kevin Lai,Liefeng Bo,Xiaofeng Ren,Dieter Fox +3 more
- 09 May 2011
TL;DR: A large-scale, hierarchical multi-view object dataset collected using anRGB-D camera is introduced and techniques for RGB-D based object recognition and detection are introduced, demonstrating that combining color and depth information substantially improves quality of results.
Visual Place Recognition: A Survey
Stephanie Lowry,Niko Sünderhauf,Paul Newman,John J. Leonard,David D. Cox,Peter Corke,Michael Milford +6 more
TL;DR: A survey of the visual place recognition research landscape is presented, introducing the concepts behind place recognition, how a “place” is defined in a robotics context, and the major components of a place recognition system.
Aligning point cloud views using persistent feature histograms
Radu Bogdan Rusu,Nico Blodow,Zoltan-Csaba Marton,Michael Beetz +3 more
- 14 Oct 2008
TL;DR: This paper investigates the usage of persistent point feature histograms for the problem of aligning point cloud data views into a consistent global model, and estimates a set of robust 16D features which describe the geometry of each point locally.