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A genetic programming approach to designing convolutional neural network architectures.

, , and . GECCO, page 497-504. ACM, (2017)

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Exploiting the Potential of Standard Convolutional Autoencoders for Image Restoration by Evolutionary Search., , and . ICML, volume 80 of Proceedings of Machine Learning Research, page 4778-4787. PMLR, (2018)Improving Generalization Ability of Deep Neural Networks for Visual Recognition Tasks., , and . CCIW, volume 11418 of Lecture Notes in Computer Science, page 3-13. Springer, (2019)A generative model approach for visualising convolutional neural networks., , and . Int. J. Comput. Intell. Stud., 7 (3/4): 214-230 (2018)Hyperparameter-Free Out-of-Distribution Detection Using Cosine Similarity., , and . ACCV (4), volume 12625 of Lecture Notes in Computer Science, page 53-69. Springer, (2020)Detection of electrical stimulation position in recorded surgery videos of cortical mapping in awake brain surgery., and . IWCIA, page 131-136. IEEE, (2013)Single-image Defocus Deblurring by Integration of Defocus Map Prediction Tracing the Inverse Problem Computation., , and . CoRR, (2022)Generative adversarial network for visualizing convolutional network., , and . IWCIA, page 153-158. IEEE, (2017)Designing Convolutional Neural Network Architectures Using Cartesian Genetic Programming., , and . Deep Neural Evolution, Springer, (2020)Attention-Based Adaptive Selection of Operations for Image Restoration in the Presence of Unknown Combined Distortions., , and . CVPR, page 9039-9048. Computer Vision Foundation / IEEE, (2019)Network Pruning and Fine-tuning for Few-shot Industrial Image Anomaly Detection., , and . INDIN, page 1-6. IEEE, (2023)