Lightweight Parallel Octave Convolutional Neural Network for Hyperspectral Image Classification

Dan Li, Han-Zhen Wu, Yujian Wang, Xiaojun Li, Fanqiang Kong, Qiang Wang
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Abstract

Although most deep learning-based methods have achieved excellent performance for hyperspectral image (HSI) classification, they are often limited by complex networks and require massive training samples in practical applications. Therefore, designing an efficient, lightweight model to obtain better classification results under small samples situations remains a challenging task. To alleviate this problem, a novel, lightweight parallel octave convolutional neural network (LPOCNN) for HSI classification is proposed in this paper. First, the HSI data is preprocessed to construct two three-dimensional (3D) patch cubes with different spatial and spectral scales for each central pixel, removing redundancy and focusing on extracting spatial features and spectral features, respectively. Next, two non- deep parallel branches are created for the two inputs, which design octave convolution rather than classical 3D convolution to facilitate light weighting of the model. Then two-dimensional convolutional neural network is used to extract deeper spectral-spatial features when fusing spectral-spatial features from different parallel layers. Moreover, the spectral-spatial attention is designed to promote the classification performance even further by adaptively adjusting the weights of different spectral-spatial features according to their contribution to classification. Experiments show that our suggested LPOCNN acquires a significant advantage on classification performance over other competitive methods under small sample situations.
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用于高光谱图像分类的轻量级并行八度卷积神经网络
尽管大多数基于深度学习的方法在高光谱图像(HSI)分类方面取得了优异的成绩,但在实际应用中往往受到复杂网络的限制,并且需要大量的训练样本。因此,设计一个高效、轻量级的模型,在小样本情况下获得更好的分类结果仍然是一项具有挑战性的任务。为了解决这一问题,本文提出了一种新的轻量级并行八度卷积神经网络(LPOCNN)用于HSI分类。首先,对HSI数据进行预处理,为每个中心像元构建两个具有不同空间尺度和光谱尺度的三维patch立方体,去除冗余,重点提取空间特征和光谱特征;其次,为两个输入创建了两个非深度并行分支,该分支设计了八度卷积而不是经典的三维卷积,以促进模型的轻量化。然后利用二维卷积神经网络对不同平行层的光谱空间特征进行融合,提取更深层次的光谱空间特征;此外,为了进一步提高分类性能,设计了光谱空间关注,根据不同光谱空间特征对分类的贡献自适应调整其权重。实验表明,在小样本情况下,我们提出的LPOCNN在分类性能上比其他竞争方法有明显的优势。
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