A Weakly-Supervised Semantic Segmentation Approach based on the Centroid Loss: Application to Quality Control and Inspection
Kai Yao, Alberto Ortiz, Francisco Bonnin-Pascual

TL;DR
This paper introduces a novel weakly-supervised semantic segmentation method using a Centroid Loss to improve training with less detailed annotations, demonstrating competitive results in industrial quality control and defect inspection tasks.
Contribution
The paper proposes a new loss function incorporating Centroid Loss to enhance weakly-supervised segmentation, validated on industry-related datasets.
Findings
Achieved competitive segmentation performance with weak annotations.
Effective in industrial quality control and defect detection.
Centroid Loss improves pixel clustering during training.
Abstract
It is generally accepted that one of the critical parts of current vision algorithms based on deep learning and convolutional neural networks is the annotation of a sufficient number of images to achieve competitive performance. This is particularly difficult for semantic segmentation tasks since the annotation must be ideally generated at the pixel level. Weakly-supervised semantic segmentation aims at reducing this cost by employing simpler annotations that, hence, are easier, cheaper and quicker to produce. In this paper, we propose and assess a new weakly-supervised semantic segmentation approach making use of a novel loss function whose goal is to counteract the effects of weak annotations. To this end, this loss function comprises several terms based on partial cross-entropy losses, being one of them the Centroid Loss. This term induces a clustering of the image pixels in the…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Advanced Neural Network Applications · Image and Object Detection Techniques
