CVApr 9, 2021

TaylorMade VDD: Domain-adaptive Visual Defect Detector for High-mix Low-volume Production of Non-convex Cylindrical Metal Objects

arXiv:2104.04203v1
Originality Incremental advance
AI Analysis

This addresses a domain shift problem in industrial defect detection for metal objects, but it is incremental as it applies existing NAS techniques to a specific task.

The paper tackled visual defect detection for high-mix low-volume production of non-convex metal objects by introducing a domain-adaptive framework using network architecture search, achieving higher burr detection accuracy compared to a baseline method for data with different training and test domains.

Visual defect detection (VDD) for high-mix low-volume production of non-convex metal objects, such as high-pressure cylindrical piping joint parts (VDD-HPPPs), is challenging because subtle difference in domain (e.g., metal objects, imaging device, viewpoints, lighting) significantly affects the specular reflection characteristics of individual metal object types. In this paper, we address this issue by introducing a tailor-made VDD framework that can be automatically adapted to a new domain. Specifically, we formulate this adaptation task as the problem of network architecture search (NAS) on a deep object-detection network, in which the network architecture is searched via reinforcement learning. We demonstrate the effectiveness of the proposed framework using the VDD-HPPPs task as a factory case study. Experimental results show that the proposed method achieved higher burr detection accuracy compared with the baseline method for data with different training/test domains for the non-convex HPPPs, which are particularly affected by domain shifts.

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