In this paper, we propose a new pooling method for deep convolu-tional neural networks. Previously introduced pooling methods either have very simple assumptions or they depend on stochastic events. Different from those methods, RegP pooling intensely investigates the input data. The main idea of this approach is finding the most distinguishing parts in regions of the input by investigating neighborhood regions to construct the pooled representation. RegP pooling improves the efficiency of the learning process, which is clearly visible in the experimental results. Further, the proposed pooling method outperformed other widely used hand-crafted pooling methods on several benchmark datasets.
CITATION STYLE
Yildirim, O., & Baloglrf, U. B. (2019). Regp: A new pooling algorithm for deep convolutional neural networks. Neural Network World, 29(1), 45–60. https://doi.org/10.14311/NNW.2019.29.004
Mendeley helps you to discover research relevant for your work.