Back to Search Start Over

Image Quality Is Not All You Want: Task-Driven Lens Design for Image Classification

Authors :
Yang, Xinge
Fu, Qiang
Nie, Yunfeng
Heidrich, Wolfgang
Publication Year :
2023

Abstract

In computer vision, it has long been taken for granted that high-quality images obtained through well-designed camera lenses would lead to superior results. However, we find that this common perception is not a "one-size-fits-all" solution for diverse computer vision tasks. We demonstrate that task-driven and deep-learned simple optics can actually deliver better visual task performance. The Task-Driven lens design approach, which relies solely on a well-trained network model for supervision, is proven to be capable of designing lenses from scratch. Experimental results demonstrate the designed image classification lens (``TaskLens'') exhibits higher accuracy compared to conventional imaging-driven lenses, even with fewer lens elements. Furthermore, we show that our TaskLens is compatible with various network models while maintaining enhanced classification accuracy. We propose that TaskLens holds significant potential, particularly when physical dimensions and cost are severely constrained.<br />Comment: Use an image classification network to supervise the lens design from scratch. The final designs can achieve higher accuracy with fewer optical elements

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.17185
Document Type :
Working Paper