会议专题

Pyramidal Combination of Separable Branches for Deep Short Connected Neural Networks

  Recent works have shown that Convolutional Neural Networks (CNNs) with deeper structure and short connections have extremely good performance in image classification tasks. However, deep short connected neural networks have been proven that they are merely ensembles of relatively shallow networks. From this point, instead of traditional simple module stacked neural networks, we propose Pyramidal Combination of Separable Branches Neural Networks (PCSB-Nets), whose basic module is deeper, more delicate and flexible with much fewer parameters. The PCSB-Nets can fuse the caught features more sufficiently, disproportionately increase the efficiency of parameters and improve the model’s generalization and capacity abilities. Experiments have shown this novel architecture has improvement gains on benchmark CIFAR image classification datasets.

Deep learning CNNs PCSB-Nets

Yao Lu Guangming Lu Rui Lin Bing Ma

Harbin Institute of Technology (ShenZhen),ShenZhen,China

国际会议

中国模式识别与计算机视觉大会(PRCV2018)

广州

英文

75-86

2018-11-23(万方平台首次上网日期,不代表论文的发表时间)