The document summarizes a modified CNN-based face recognition system that achieves improved accuracy rates over traditional CNN models. Preprocessing techniques like histogram equalization, self-quotient image, locally tuned inverse sine nonlinear, gamma intensity correction, and difference of Gaussian are applied to CNN models to further improve accuracy. On the Extended Yale B database, the proposed CNN model achieves an accuracy of 96.2% without preprocessing, and 99.8% with preprocessing. On the FERET database, accuracy improves from 71.4% without preprocessing to 76.3% with preprocessing.