Recognition of Changes in SAR Images Based on Gauss-Log Ratio and MRFFCM
This is an incremental improvement for SAR image analysis, addressing change detection in noisy radar imagery.
The paper tackles SAR image change detection by proposing a modified MRFFCM method that uses Gauss-log ratio for difference image generation, SRAD for noise reduction, and MRFFCM for detection, showing improved performance over FCM and MRFFCM in metrics like OE, PCC, KC, RMSE, and PSNR.
A modified version of MRFFCM (Markov Random Field Fuzzy C means) based SAR (Synthetic aperture Radar) image change detection method is proposed in this paper. It involves three steps: Difference Image (DI) generation by using Gauss-log ratio operator, speckle noise reduction by SRAD (Speckle Reducing Anisotropic Diffusion), and the detection of changed regions by using MRFFCM. The proposed method is compared with existing methods such as FCM and MRFFCM using simulated and real SAR images. The measures used for evaluation includes Overall Error (OE), Percentage Correct Classification (PCC), Kappa Coefficient (KC), Root Mean Square Error (RMSE), and Peak Signal to Noise Ratio (PSNR). The results show that the proposed method is better compared to FCM and MRFFCM based change detection method.