4.7 Article

Sparse pixel image sensor

期刊

SCIENTIFIC REPORTS
卷 12, 期 1, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/s41598-022-09594-y

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  1. Austrian Science Fund FWF [START Y 539-N16]

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As conventional frame-based cameras have high energy consumption and latency, new types of image sensors have been developed to tackle these issues. These sensors capture only the coefficients of the most relevant spatial frequencies, allowing for lower energy consumption and latency. A new image sensor has been developed based on a mathematical framework, which can be trained to classify images by reading out only a few relevant pixels. The sensor demonstrates comparable accuracy to full image readout in the classification of handwritten digits, but with lower delay and energy consumption.
As conventional frame-based cameras suffer from high energy consumption and latency, several new types of image sensors have been devised, with some of them exploiting the sparsity of natural images in some transform domain. Instead of sampling the full image, those devices capture only the coefficients of the most relevant spatial frequencies. The number of samples can be even sparser if a signal only needs to be classified rather than being fully reconstructed. Based on the corresponding mathematical framework, we developed an image sensor that can be trained to classify optically projected images by reading out the few most relevant pixels. The device is based on a two-dimensional array of metal-semiconductor-metal photodetectors with individually tunable photoresponsivity values. We demonstrate its use for the classification of handwritten digits with an accuracy comparable to that achieved by readout of the full image, but with lower delay and energy consumption.

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