IVCVLGOct 22, 2019

Image processing in DNA

arXiv:1910.10095v2
Originality Incremental advance
AI Analysis

This addresses cost and error issues for DNA data storage platforms, though it appears incremental as it builds on existing techniques for image processing.

The authors tackled the high cost and error rates in DNA-based data storage by proposing a method that uses signal processing and machine learning to store quantized images without redundant oligos or rewriting, demonstrating it experimentally on movie posters.

The main obstacles for the practical deployment of DNA-based data storage platforms are the prohibitively high cost of synthetic DNA and the large number of errors introduced during synthesis. In particular, synthetic DNA products contain both individual oligo (fragment) symbol errors as well as missing DNA oligo errors, with rates that exceed those of modern storage systems by orders of magnitude. These errors can be corrected either through the use of a large number of redundant oligos or through cycles of writing, reading, and rewriting of information that eliminate the errors. Both approaches add to the overall storage cost and are hence undesirable. Here we propose the first method for storing quantized images in DNA that uses signal processing and machine learning techniques to deal with error and cost issues without resorting to the use of redundant oligos or rewriting. Our methods rely on decoupling the RGB channels of images, performing specialized quantization and compression on the individual color channels, and using new discoloration detection and image inpainting techniques. We demonstrate the performance of our approach experimentally on a collection of movie posters stored in DNA.

Foundations

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