“…Estimation of the weights is challenging due to the correction of non-positive values and the non-linearity of the logarithm [37]. Examples of existing variance estimation techniques include noisy-data based weights [14], [21], [24], [38], denoised-data based weights [31], [32], [36], [38], model-based weights using certain mean-variance relationship [39][10][40], and iteratively re-weighted least-squares [17], [29], [41]. Also, statistical correlation between the estimated weights and the noisy data can cause negative bias in the reconstructed image [15], [38], [39].…”