IVCVOPTICSJul 16, 2020

Dynamic Low-light Imaging with Quanta Image Sensors

arXiv:2007.08614v148 citations
AI Analysis

This addresses the problem of imaging dynamic scenes in low-light conditions for applications like surveillance or photography, representing an incremental advance in reconstruction algorithms for Quanta Image Sensors.

The paper tackled dynamic low-light imaging by proposing a student-teacher training protocol for reconstructing scenes from bursts of frames at 1 photon per pixel per frame, achieving effective results compared to existing methods.

Imaging in low light is difficult because the number of photons arriving at the sensor is low. Imaging dynamic scenes in low-light environments is even more difficult because as the scene moves, pixels in adjacent frames need to be aligned before they can be denoised. Conventional CMOS image sensors (CIS) are at a particular disadvantage in dynamic low-light settings because the exposure cannot be too short lest the read noise overwhelms the signal. We propose a solution using Quanta Image Sensors (QIS) and present a new image reconstruction algorithm. QIS are single-photon image sensors with photon counting capabilities. Studies over the past decade have confirmed the effectiveness of QIS for low-light imaging but reconstruction algorithms for dynamic scenes in low light remain an open problem. We fill the gap by proposing a student-teacher training protocol that transfers knowledge from a motion teacher and a denoising teacher to a student network. We show that dynamic scenes can be reconstructed from a burst of frames at a photon level of 1 photon per pixel per frame. Experimental results confirm the advantages of the proposed method compared to existing methods.

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