On the Transfer of Collinearity to Computer Vision
Frederik Beuth, Danny Kowerko

TL;DR
This paper explores transferring the human visual perception principle of collinearity to computer vision, demonstrating its potential to improve performance in specific industrial and scientific applications through a prototype model and systematic benchmarking.
Contribution
It introduces a novel application of collinearity in computer vision, develops a prototype, and benchmarks its effectiveness across diverse use cases, highlighting scenarios where it is beneficial.
Findings
Collinearity improves fault detection in wafers by 24%.
Collinearity enhances defect recognition in nanotech by 3.2x.
Collinearity shows limited benefit for ImageNet.
Abstract
Collinearity is a visual perception phenomenon in the human brain that amplifies spatially aligned edges arranged along a straight line. However, it is vague for which purpose humans might have this principle in the real-world, and its utilization in computer vision and engineering applications even is a largely unexplored field. In this work, our goal is to transfer the collinearity principle to computer vision, and we explore the potential usages of this novel principle for computer vision applications. We developed a prototype model to exemplify the principle, then tested it systematically, and benchmarked it in the context of four use cases. Our cases are selected to spawn a broad range of potential applications and scenarios: sketching the combination of collinearity with deep learning (case I and II), using collinearity with saliency models (case II), and as a feature detector…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Visual Attention and Saliency Detection · Advanced Neural Network Applications
