Saved in:
Bibliographic Details
Main Authors: Zhang, Xinyao, Liu, Chang, Liang, Xiao, Zheng, Minghui, Behdad, Sara
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.27441
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866918414925168640
author Zhang, Xinyao
Liu, Chang
Liang, Xiao
Zheng, Minghui
Behdad, Sara
author_facet Zhang, Xinyao
Liu, Chang
Liang, Xiao
Zheng, Minghui
Behdad, Sara
contents Precise segmentation of irregular and densely arranged components is essential for robotic disassembly and material recovery in electronic waste (e-waste) recycling. This study evaluates the impact of model architecture and scale on segmentation performance by comparing SAM2, a transformer-based vision model, with the lightweight YOLOv8 network. Both models were trained and tested on a newly collected dataset of 1,456 annotated RGB images of laptop components including logic boards, heat sinks, and fans, captured under varying illumination and orientation conditions. Data augmentation techniques, such as random rotation, flipping, and cropping, were applied to improve model robustness. YOLOv8 achieved higher segmentation accuracy (mAP50 = 98.8%, mAP50-95 = 85%) and stronger boundary precision than SAM2 (mAP50 = 8.4%). SAM2 demonstrated flexibility in representing diverse object structures but often produced overlapping masks and inconsistent contours. These findings show that large pre-trained models require task-specific optimization for industrial applications. The resulting dataset and benchmarking framework provide a foundation for developing scalable vision algorithms for robotic e-waste disassembly and circular manufacturing systems.
format Preprint
id arxiv_https___arxiv_org_abs_2603_27441
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Evaluating Large and Lightweight Vision Models for Irregular Component Segmentation in E-Waste Disassembly
Zhang, Xinyao
Liu, Chang
Liang, Xiao
Zheng, Minghui
Behdad, Sara
Computer Vision and Pattern Recognition
Artificial Intelligence
Precise segmentation of irregular and densely arranged components is essential for robotic disassembly and material recovery in electronic waste (e-waste) recycling. This study evaluates the impact of model architecture and scale on segmentation performance by comparing SAM2, a transformer-based vision model, with the lightweight YOLOv8 network. Both models were trained and tested on a newly collected dataset of 1,456 annotated RGB images of laptop components including logic boards, heat sinks, and fans, captured under varying illumination and orientation conditions. Data augmentation techniques, such as random rotation, flipping, and cropping, were applied to improve model robustness. YOLOv8 achieved higher segmentation accuracy (mAP50 = 98.8%, mAP50-95 = 85%) and stronger boundary precision than SAM2 (mAP50 = 8.4%). SAM2 demonstrated flexibility in representing diverse object structures but often produced overlapping masks and inconsistent contours. These findings show that large pre-trained models require task-specific optimization for industrial applications. The resulting dataset and benchmarking framework provide a foundation for developing scalable vision algorithms for robotic e-waste disassembly and circular manufacturing systems.
title Evaluating Large and Lightweight Vision Models for Irregular Component Segmentation in E-Waste Disassembly
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2603.27441