A Fast Fault-Tolerant Architecture for Sauvola Local Image Thresholding Algorithm Using Stochastic Computing - 2016 PROJECT TITLE : A Fast Fault-Tolerant Architecture for Sauvola Local Image Thresholding Algorithm Using Stochastic Computing - 2016 ABSTRACT: Binarization plays an vital role in document Image Processing, particularly in degraded document pictures. Among all local image thresholding algorithms, Sauvola has excellent binarization performance for degraded document images. But, this algorithm is computationally intensive and sensitive to the noises from the inner computational circuits. In this paper, we present a stochastic implementation of Sauvola algorithm. Our experimental results show that the stochastic implementation of Sauvola desires a lot of less time and space and can tolerate a lot of faults, while consuming less power in comparison with its conventional implementation. Did you like this research project? To get this research project Guidelines, Training and Code... Click Here facebook twitter google+ linkedin stumble pinterest Fault Tolerant Computing Stochastic Processes Document Image Processing Image Binarization Sauvola Image Thresholding Stochastic Computing (SC) A New Optimal Algorithm for Energy Saving in Embedded System With Multiple Sleep Modes - 2016 Write Buffer-Oriented Energy Reduction in the L1 Data Cache for Embedded Systems - 2016