论文标题

LitedEpthwisenet:高光谱图像分类的极端轻量级网络

LiteDepthwiseNet: An Extreme Lightweight Network for Hyperspectral Image Classification

论文作者

Cui, Benlei, Dong, XueMei, Zhan, Qiaoqiao, Peng, Jiangtao, Sun, Weiwei

论文摘要

深度学习方法表明,与传统方法相比,高光谱图像(HSI)分类的潜力很大。但是,他们通常需要大量的培训样本,并且具有大量参数和高度计算开销。为了解决这些问题,本文提出了一种新的网络体系结构,即LitedEpthwisenet,用于HSI分类。基于3D深度卷积,LitedEpthwisenet可以将标准卷积分解为深度卷积和点式卷积,从而可以通过最小的参数实现高分类性能。此外,我们在原始的3D深度卷积中删除了relu层和批处理层,这显着改善了小型数据集上模型的过度拟合现象。此外,局灶性损失被用作损失函数,以提高模型对困难样本和不平衡数据的关注,并且其训练性能明显优于跨透镜丢失或平衡的跨透明镜损失。三个基准高光谱数据集的实验结果表明,LitedEpthwisenet可以实现最先进的性能,其参数数量很少,计算成本低。

Deep learning methods have shown considerable potential for hyperspectral image (HSI) classification, which can achieve high accuracy compared with traditional methods. However, they often need a large number of training samples and have a lot of parameters and high computational overhead. To solve these problems, this paper proposes a new network architecture, LiteDepthwiseNet, for HSI classification. Based on 3D depthwise convolution, LiteDepthwiseNet can decompose standard convolution into depthwise convolution and pointwise convolution, which can achieve high classification performance with minimal parameters. Moreover, we remove the ReLU layer and Batch Normalization layer in the original 3D depthwise convolution, which significantly improves the overfitting phenomenon of the model on small sized datasets. In addition, focal loss is used as the loss function to improve the model's attention on difficult samples and unbalanced data, and its training performance is significantly better than that of cross-entropy loss or balanced cross-entropy loss. Experiment results on three benchmark hyperspectral datasets show that LiteDepthwiseNet achieves state-of-the-art performance with a very small number of parameters and low computational cost.

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