Convolutional Neural Networks (CNN) have been rigorously studied for Hyperspectral Image Classification (HSIC) and are known to be effective in exploiting joint spatial-spectral information with the expense of lower generalization performance and learning speed due to the hard labels and non-uniform distribution over labels. Several regularization techniques have been used to overcome the aforesaid issues. However, sometimes models learn to predict the samples extremely confidently which is not good from a generalization point of view. Therefore, this paper proposed an idea to enhance the generalization performance of a hybrid CNN for HSIC using soft labels that are a weighted average of the hard labels and uniform distribution over ground labels. The proposed method helps to prevent CNN from becoming over-confident. We empirically show that in improving generalization performance, label smoothing also improves model calibration which significantly improves beam-search. Several publicly available Hyperspectral datasets are used to validate the experimental evaluation which reveals improved generalization performance, statistical significance, and computational complexity as compared to the state-of-the-art models. The code will be made available at https://github.com/mahmad00.
翻译:超光谱图像分类(HSIC)已经严格研究了超光谱相控神经网络(CNN),已知在利用联合空间光谱信息方面十分有效,由于标签的硬标签和非统一分布,降低了通用性能和学习速度,使用了一些正规化技术来克服上述问题,但有时模型学会了非常自信地预测样本,而从一般观点来看,这些样本并不很好。因此,本文件提出了一个想法,用软标签作为硬标签和统一分布在地面标签上的加权平均数,提高HSIC混合CNN的通用性能。拟议方法有助于防止CNN变得过于自信。我们从经验上表明,在提高通用性能方面,标签的平稳也改进了模型校准,从而大大改进了搜索。一些公开提供的超光谱数据集用于验证实验性评估,该实验性评估显示,总体性业绩、统计意义和计算复杂性已得到改善,与州-艺术模型相比较。该代码将在https://githhubub.com/mamah00上公布。