LightDefectNet: A Highly Compact Deep Anti-Aliased Attention Condenser Neural Network Architecture for Light Guide Plate Surface Defect Detection

04/25/2022
by   Carol Xu, et al.
0

Light guide plates are essential optical components widely used in a diverse range of applications ranging from medical lighting fixtures to back-lit TV displays. An essential step in the manufacturing of light guide plates is the quality inspection of defects such as scratches, bright/dark spots, and impurities. This is mainly done in industry through manual visual inspection for plate pattern irregularities, which is time-consuming and prone to human error and thus act as a significant barrier to high-throughput production. Advances in deep learning-driven computer vision has led to the exploration of automated visual quality inspection of light guide plates to improve inspection consistency, accuracy, and efficiency. However, given the cost constraints in visual inspection scenarios, the widespread adoption of deep learning-driven computer vision methods for inspecting light guide plates has been greatly limited due to high computational requirements. In this study, we explore the utilization of machine-driven design exploration with computational and "best-practices" constraints as well as L_1 paired classification discrepancy loss to create LightDefectNet, a highly compact deep anti-aliased attention condenser neural network architecture tailored specifically for light guide plate surface defect detection in resource-constrained scenarios. Experiments show that LightDetectNet achieves a detection accuracy of ∼98.2 LGPSDD benchmark while having just 770K parameters (∼33× and ∼6.9× lower than ResNet-50 and EfficientNet-B0, respectively) and ∼93M FLOPs (∼88× and ∼8.4× lower than ResNet-50 and EfficientNet-B0, respectively) and ∼8.8× faster inference speed than EfficientNet-B0 on an embedded ARM processor.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/29/2021

TinyDefectNet: Highly Compact Deep Neural Network Architecture for High-Throughput Manufacturing Visual Quality Inspection

A critical aspect in the manufacturing process is the visual quality ins...
research
04/25/2022

CellDefectNet: A Machine-designed Attention Condenser Network for Electroluminescence-based Photovoltaic Cell Defect Inspection

Photovoltaic cells are electronic devices that convert light energy to e...
research
03/28/2019

Automatic Defect Segmentation on Leather with Deep Learning

Leather is a natural and durable material created through a process of t...
research
12/18/2022

Automated Optical Inspection of FAST's Reflector Surface using Drones and Computer Vision

The Five-hundred-meter Aperture Spherical radio Telescope (FAST) is the ...
research
01/23/2023

PCBDet: An Efficient Deep Neural Network Object Detection Architecture for Automatic PCB Component Detection on the Edge

There can be numerous electronic components on a given PCB, making the t...
research
09/15/2023

An inspection technology of inner surface of the fine hole based on machine vision

Fine holes are an important structural component of industrial component...

Please sign up or login with your details

Forgot password? Click here to reset