Exposure-Referred Signal-to-Noise Ratio for Digital Image Sensors
Abhiram Gnanasambandam, Stanley H. Chan

TL;DR
This paper rigorously derives the exposure-referred SNR for digital image sensors, clarifying its relationship with output-referred SNR, and explores its computation and utility in imaging tasks.
Contribution
It provides a comprehensive, first-principles derivation of exposure-referred SNR, clarifies its connection to output-referred SNR, and offers practical methods for computation and application.
Findings
Derived the exposure-referred SNR from first principles.
Established the relationship between exposure-referred and output-referred SNR.
Provided efficient computation methods for the SNR.
Abstract
The signal-to-noise ratio (SNR) is a fundamental tool to measure the performance of an image sensor. However, confusions sometimes arise between the two types of SNRs. The first one is the output-referred SNR which measures the ratio between the signal and the noise seen at the sensor's output. This SNR is easy to compute, and it is linear in the log-log scale for most image sensors. The second SNR is the exposure-referred SNR, also known as the input-referred SNR. This SNR considers the noise at the input by including a derivative term to the output-referred SNR. The two SNRs have similar behaviors for sensors with a large full-well capacity. However, for sensors with a small full-well capacity, the exposure-referred SNR can capture some behaviors that the output-referred SNR cannot. While the exposure-referred SNR has been known and used by the industry for a long time, a…
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Taxonomy
TopicsCCD and CMOS Imaging Sensors · Infrared Target Detection Methodologies · Image and Signal Denoising Methods
