Abstract

High-Level Structure (HLS) extraction in a set of images consists of recognizing 3D elements with useful information to the user or application. There are several approaches to HLS extraction. However, most of these approaches are based on processing two or more images captured from different camera views or on processing 3D data in the form of point clouds extracted from the camera images. In contrast and motivated by the extensive work developed for the problem of depth estimation in a single image, where parallax constraints are not required, in this work, we propose a novel methodology towards HLS extraction from a single image with promising results. For that, our method has four steps. First, we use a CNN to predict the depth for a single image. Second, we propose a region-wise analysis to refine depth estimates. Third, we introduce a graph analysis to segment the depth in semantic orientations aiming at identifying potential HLS. Finally, the depth sections are provided to a new CNN architecture that predicts HLS in the shape of cubes and rectangular parallelepipeds.

Highlights

  • In computer vision, High-Level Structure (HLS) extraction consists of recognizing 3D elements from a set of images

  • We present the discussion and results of the proposed HLS extraction. These discussion and results are the integration of the proposed depth analysis to remove uncertain depth sections, a new graph analysis to locate possible 3D shapes and a new Convolution Neural Network (CNN) architecture that predicts HLS

  • We have presented a novel method for HLS extraction from a single image

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Summary

Introduction

High-Level Structure (HLS) extraction consists of recognizing 3D elements from a set of images. HLS reduces computational processing by covering large areas with a few parameters Due to these characteristics (rich scene information and computational processing reduction), several tasks use HLS in order to perform improvements, for example: robotics [1], augmented reality [2], navigation [3], 3D reconstruction [4] and Simultaneous Localization and Mapping (SLAM) [5]. There exist several approaches for HLS extraction: the first analyses two or more images captured from different camera views [6,7]. This approach has high performance under image sequences (collections of images related by time, such as frames in a movie or magnetic resonance imaging)

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