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Adaptive sampling for scanning pixel cameras

2022-07-27 11:21:47
Yusuf Duman, Jean-Yves Guillemaut, Simon Hadfield

Abstract

A scanning pixel camera is a novel low-cost, low-power sensor that is not diffraction limited. It produces data as a sequence of samples extracted from various parts of the scene during the course of a scan. It can provide very detailed images at the expense of samplerates and slow image acquisition time. This paper proposes a new algorithm which allows the sensor to adapt the samplerate over the course of this sequence. This makes it possible to overcome some of these limitations by minimising the bandwidth and time required to image and transmit a scene, while maintaining image quality. We examine applications to image classification and semantic segmentation and are able to achieve similar results compared to a fully sampled input, while using 80% fewer samples

Abstract (translated)

URL

https://arxiv.org/abs/2207.13460

PDF

https://arxiv.org/pdf/2207.13460.pdf


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