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Machine-learning enables Image Reconstruction and Classification in a "see-through" camera

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arxiv 1908.09401 v1 pith:AQR3JXI4 submitted 2019-08-25 eess.IV physics.optics

Machine-learning enables Image Reconstruction and Classification in a "see-through" camera

classification eess.IV physics.optics
keywords classificationimagenetworkcamerareconstructionresultssee-throughsensor
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We demonstrate that image reconstruction can be achieved via a convolutional neural network for a "see-through" computational camera comprised of a transparent window and a CMOS image sensor. Furthermore, we compared classification results using a classifier network for the raw sensor data vs the reconstructed images. The results suggest that similar classification accuracy is likely possible in both cases with appropriate network optimizations. All networks were trained and tested for the MNIST (6 classes), EMNIST and the Kanji49 datasets.

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