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Main Authors: Zocco, Federico, Pozzi, Maria, Malvezzi, Monica
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.28690
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author Zocco, Federico
Pozzi, Maria
Malvezzi, Monica
author_facet Zocco, Federico
Pozzi, Maria
Malvezzi, Monica
contents Stable and reliable supplies of rare-Earth minerals and critical raw materials (CRMs) are essential for the development of the European Union. Since a large share of these materials enters the Union from outside, a valid option for CRMs supply resilience and security is to recover them from end-of-use products. Hence, in this paper we present the preliminary phases of the development of real-time visual detection of PC desktop components running on edge devices to simultaneously achieve two goals. The first goal is to perform robotic disassembly of PC desktops, where the adaptivity of learning-based vision can enable the processing of items with unpredictable geometry caused by accidental damages. We also discuss the robot end-effectors for different PC components with the object contact points derivable from neural detector bounding boxes. The second goal is to provide in an autonomous, highly-granular, and timely fashion, the data needed to perform material flow analysis (MFA) since, to date, MFA often lacks of the data needed to accurately study material stocks and flows. The second goal is achievable thanks to the recently-proposed synchromaterials, which can generate both local and wide-area (e.g., national) material mass information in a real-time and synchronized fashion.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28690
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Vision-Based Robotic Disassembly Combined with Real-Time MFA Data Acquisition
Zocco, Federico
Pozzi, Maria
Malvezzi, Monica
Robotics
Computational Engineering, Finance, and Science
Stable and reliable supplies of rare-Earth minerals and critical raw materials (CRMs) are essential for the development of the European Union. Since a large share of these materials enters the Union from outside, a valid option for CRMs supply resilience and security is to recover them from end-of-use products. Hence, in this paper we present the preliminary phases of the development of real-time visual detection of PC desktop components running on edge devices to simultaneously achieve two goals. The first goal is to perform robotic disassembly of PC desktops, where the adaptivity of learning-based vision can enable the processing of items with unpredictable geometry caused by accidental damages. We also discuss the robot end-effectors for different PC components with the object contact points derivable from neural detector bounding boxes. The second goal is to provide in an autonomous, highly-granular, and timely fashion, the data needed to perform material flow analysis (MFA) since, to date, MFA often lacks of the data needed to accurately study material stocks and flows. The second goal is achievable thanks to the recently-proposed synchromaterials, which can generate both local and wide-area (e.g., national) material mass information in a real-time and synchronized fashion.
title Vision-Based Robotic Disassembly Combined with Real-Time MFA Data Acquisition
topic Robotics
Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2603.28690