CVIVJun 3, 2022

Learning rich optical embeddings for privacy-preserving lensless image classification

arXiv:2206.01429v15 citationsh-index: 102
Originality Incremental advance
AI Analysis

This work addresses visual privacy concerns in computational imaging for applications like compact cameras, though it is incremental as it builds on existing lensless imaging techniques.

The authors tackled the problem of privacy-preserving image classification by jointly optimizing a lensless optical encoder and a digital classifier, resulting in lower resolution embeddings that enhance privacy and robustness to real-world image transformations.

By replacing the lens with a thin optical element, lensless imaging enables new applications and solutions beyond those supported by traditional camera design and post-processing, e.g. compact and lightweight form factors and visual privacy. The latter arises from the highly multiplexed measurements of lensless cameras, which require knowledge of the imaging system to recover a recognizable image. In this work, we exploit this unique multiplexing property: casting the optics as an encoder that produces learned embeddings directly at the camera sensor. We do so in the context of image classification, where we jointly optimize the encoder's parameters and those of an image classifier in an end-to-end fashion. Our experiments show that jointly learning the lensless optical encoder and the digital processing allows for lower resolution embeddings at the sensor, and hence better privacy as it is much harder to recover meaningful images from these measurements. Additional experiments show that such an optimization allows for lensless measurements that are more robust to typical real-world image transformations. While this work focuses on classification, the proposed programmable lensless camera and end-to-end optimization can be applied to other computational imaging tasks.

Foundations

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