This paper evaluates various order statistics filters for the removal of impulse and mixed noise from remote sensing images, highlighting the challenges of image denoising where noise removal can blur details. Three algorithms based on median filtering are discussed, focusing on their robustness and performance in preserving edges while minimizing artifacts. The study's findings are supported by computational results, comparing the effectiveness of these algorithms using metrics such as peak signal-to-noise ratio (PSNR).