Transparent Fragments Contour Estimation via Visual-Tactile Fusion for Autonomous Reassembly
Qihao Lin, Borui Chen, Yuping Zhou, Jianing Wu, Yulan Guo, Weishi Zheng, and Chongkun Xia

TL;DR
This paper presents a novel visual-tactile fusion framework for accurately estimating the contours of transparent fragments, facilitating autonomous reassembly in various fields, supported by a new dataset and a benchmark for evaluation.
Contribution
It introduces a comprehensive framework combining visual and tactile data for transparent fragment contour estimation, along with a new dataset and reassembly benchmark.
Findings
Framework achieves strong real-world performance.
Proposed dataset enables effective training and evaluation.
Reassembly algorithm improves accuracy of fragment matching.
Abstract
The contour estimation of transparent fragments is very important for autonomous reassembly, especially in the fields of precision optical instrument repair, cultural relic restoration, and identification of other precious device broken accidents. Different from general intact transparent objects, the contour estimation of transparent fragments face greater challenges due to strict optical properties, irregular shapes and edges. To address this issue, a general transparent fragments contour estimation framework based on visual-tactile fusion is proposed in this paper. First, we construct the transparent fragment dataset named TransFrag27K, which includes a multiscene synthetic data of broken fragments from multiple types of transparent objects, and a scalable synthetic data generation pipeline. Secondly, we propose a visual grasping position detection network named TransFragNet to…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Generative Adversarial Networks and Image Synthesis · Robot Manipulation and Learning
