Fringe Projection Based Vision Pipeline for Autonomous Hard Drive Disassembly
Badrinath Balasubramaniam, Vignesh Suresh, Benjamin Metcalf, Beiwen Li

TL;DR
This paper presents an autonomous vision system using fringe projection profilometry and deep learning for precise 3D sensing and fastener localization in robotic HDD disassembly, improving accuracy and speed.
Contribution
It introduces a unified fringe projection and deep learning pipeline that enhances 3D sensing and component localization for robotic e-waste disassembly.
Findings
Achieved high-precision instance segmentation with mAP@50 over 0.95.
Depth completion RMSE of 2.317 mm demonstrates accurate 3D geometry.
System runs at 77.7 FPS with low latency, enabling real-time operation.
Abstract
Unrecovered e-waste represents a significant economic loss. Hard disk drives (HDDs) comprise a valuable e-waste stream necessitating robotic disassembly. Automating the disassembly of HDDs requires holistic 3D sensing, scene understanding, and fastener localization, however current methods are fragmented, lack robust 3D sensing, and lack fastener localization. We propose an autonomous vision pipeline which performs 3D sensing using a Fringe Projection Profilometry (FPP) module, with selective triggering of a depth completion module where FPP fails, and integrates this module with a lightweight, real-time instance segmentation network for scene understanding and critical component localization. By utilizing the same FPP camera-projector system for both our depth sensing and component localization modules, our depth maps and derived 3D geometry are inherently pixel-wise aligned with the…
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