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A Novel Sea Ice Classification Method from Hyperspectral Image Based on Bagging PCA Hashing

机译:基于装袋PCA散列的高光谱海冰分类新方法

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Hyperspectral imagery has evident advantage for sea ice classification due to enormous spectral bands. At the meantime, hashing is promising in representing a high-dimensional feature with extremely low bit binary codes while maintaining the classification performance. In this paper, a novel sea ice classification framework based on PCA Bagging hashing is proposed to improve the accuracy of hyperspectral image classification. First, local binary pattern(LBP) features are extracted from selected spectral bands. PCA bagging is employed to generating hashing codes of the extracted features. Then, a piece of short but strong code is obtained to represent the features of each pixel. Finally, these hashing codes are fed into the extreme learning machine for classification. The experimental results in real-world dataset demonstrate that the proposed framework is superior to two closely related methods.
机译:由于巨大的光谱带,高光谱图像对于海冰的分类具有明显的优势。同时,在保持分类性能的同时,以具有极低位二进制代码的高维特征表示散列是有希望的。为了提高高光谱图像分类的准确性,提出了一种基于PCA Bagging哈希算法的海冰分类框架。首先,从选定的光谱带中提取局部二进制模式(LBP)特征。 PCA套袋用于生成提取特征的哈希码。然后,获得了一段短而强的代码来表示每个像素的特征。最后,将这些哈希码输入到极限学习机中进行分类。实际数据集中的实验结果表明,该框架优于两种密切相关的方法。

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