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Integration of adaptive guided filtering, deep feature learning, and edge-detection techniques for hyperspectral image classification

机译:集成了自适应引导滤波,深度特征学习和边缘检测技术,用于高光谱图像分类

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摘要

The integration of an edge-preserving filtering technique in the classification of a hyperspectral image (HSI) has been proven effective in enhancing classification performance. This paper proposes an ensemble strategy for HSI classification using an edge-preserving filter along with a deep learning model and edge detection. First, an adaptive guided filter is applied to the original HSI to reduce the noise in degraded images and to extract powerful spectral-spatial features. Second, the extracted features are fed as input to a stacked sparse autoencoder to adaptively exploit more invariant and deep feature representations; then, a random forest classifier is applied to fine-tune the entire pretrained network and determine the classification output. Third, a Prewitt compass operator is further performed on the HSI to extract the edges of the first principal component after dimension reduction. Moreover, the regional growth rule is applied to the resulting edge logical image to determine the local region for each unlabeled pixel. Finally, the categories of the corresponding neighborhood samples are determined in the original classification map; then, the major voting mechanism is implemented to generate the final output. Extensive experiments proved that the proposed method achieves competitive performance compared with several traditional approaches.
机译:已经证明在高光谱图像(HSI)的分类中集成了保留边缘的滤波技术,可以有效地提高分类性能。本文提出了一种使用边缘保留滤波器,深度学习模型和边缘检测的HSI分类集成策略。首先,将自适应导引滤波器应用于原始HSI,以减少降级图像中的噪声并提取强大的光谱空间特征。其次,将提取的特征作为输入提供给堆叠的稀疏自动编码器,以自适应地利用更多不变的和较深的特征表示;然后,使用随机森林分类器来微调整个预训练网络并确定分类输出。第三,进一步在HSI上执行Prewitt指南针操作,以提取尺寸减小后的第一主成分的边缘。此外,将区域增长规则应用于所得的边缘逻辑图像,以确定每个未标记像素的局部区域。最后,在原始分类图中确定相应邻域样本的类别。然后,实施主要投票机制以生成最终输出。大量的实验证明,与几种传统方法相比,该方法具有竞争优势。

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