R. Sebastian, M. Weise, et al.
ECPPM 2022
We present a stochastic algorithm that computes threshold circuits designed to discriminate between two classes of computed tomography (CT) images. The algorithm employs a partition of training examples into several classes according to the average grey scale value of images. For each class, a sub-circuit is computed, where the first layer of the sub-circuit is calculated by a new combination of the Perceptron algorithm with a special type of simulated annealing. The algorithm is evaluated for the case of liver tissue classification. A depth-five threshold circuit (with pre-processing: depth-seven) is calculated from 400 positive (abnormal findings) and 400 negative (normal liver tissue) examples. The examples are of size n = 14,161 (119 × 119) with an 8 bit grey scale. On test sets of 100 positive and 100 negative examples (all different from the learning set) we obtain a correct classification close to 99%. The total sequential run-time to compute a depth-five circuit is about 75 h up to 230 h on a SUN Ultra 5/360 workstation, depending on the width of the threshold circuit at depth-three. In our computational experiments, the depth-five circuits were calculated from three simultaneous runs for depth-four circuits. The classification of a single image is performed within a few seconds. © 2002 Elsevier Science B.V. All rights reserved.
R. Sebastian, M. Weise, et al.
ECPPM 2022
Jehanzeb Mirza, Leonid Karlinsky, et al.
NeurIPS 2023
Ankit Vishnubhotla, Charlotte Loh, et al.
NeurIPS 2023
Guojing Cong, David A. Bader
Journal of Parallel and Distributed Computing