The paper presents a novel FPGA-based recursive error-free Mitchell log multiplier (REFMLM) designed for image processing applications, particularly focusing on enhancing speed and accuracy. By utilizing error correction terms and employing the higher order Karatsuba-Ofman (KOM) architecture, the proposed multiplier excels in performance metrics such as area utilization, speed, and error rates compared to traditional multiplication techniques. The REFMLM is specifically tested for its efficacy in filtering Gaussian noise from fingerprint images, demonstrating significant improvements over existing architectures.