Accurate Ground-Truth Depth Image Generation via Overfit Training of Point Cloud Registration using Local Frame Sets
Jiwan Kim, Minchang Kim, Yeong-Gil Shin, and Minyoung Chung

TL;DR
This paper introduces a novel overfit training method for point cloud registration to generate high-quality ground-truth depth images from RGB-D streams, improving depth accuracy for computer vision applications.
Contribution
The study presents a new approach for creating high-quality ground-truth depth datasets using local frame sets and overfit training, which can be applied across various scanning environments.
Findings
The proposed method outperforms existing depth enhancement frameworks.
It enables high-quality GT depth dataset construction from RGB-D streams.
The method is effective across different scanning environments.
Abstract
Accurate three-dimensional perception is a fundamental task in several computer vision applications. Recently, commercial RGB-depth (RGB-D) cameras have been widely adopted as single-view depth-sensing devices owing to their efficient depth-sensing abilities. However, the depth quality of most RGB-D sensors remains insufficient owing to the inherent noise from a single-view environment. Recently, several studies have focused on the single-view depth enhancement of RGB-D cameras. Recent research has proposed deep-learning-based approaches that typically train networks using high-quality supervised depth datasets, which indicates that the quality of the ground-truth (GT) depth dataset is a top-most important factor for accurate system; however, such high-quality GT datasets are difficult to obtain. In this study, we developed a novel method for high-quality GT depth generation based on an…
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Taxonomy
TopicsAdvanced Vision and Imaging · Advanced Optical Sensing Technologies · 3D Surveying and Cultural Heritage
