Yuan Yan TangYang LuHaoliang Yuan
Recent research has shown that utilizing the spectral-spatial information can improve the performance of hyperspectral image (HSI) classification. Since HSI is a 3-D cube datum, 3-D spatial filtering becomes a simple and effective method for extracting the spectral-spatial information. In this paper, we propose a 3-D scattering wavelet transform, which filters the HSI cube data with a cascade of wavelet decompositions, complex modulus, and local weighted averaging. The scattering feature can adequately capture the spectral-spatial information for classification. In the classification step, a support vector machine based on Gaussian kernel is used as a classifier due to its capability to deal with high-dimensional data. Our method is fully evaluated on four classic HSIs, i.e., Indian Pines, Pavia University, Botswana, and Kennedy Space Center. The classification results show that our method achieves as high as 94.46%, 99.30%, 97.57%, and 95.20% accuracies, respectively, when only 5% of the total samples per class is labeled.
Hailong SuLina YangYuanyan TangHuiwu Luo
Nadia ZikiouMourad LahdirDavid Helbert
Lina YangHailong SuCheng ZhongZuqiang MengHuiwu LuoXichun LiYuan Yan TangYang Lu
Prabukumar ManoharanShrutika S. SawantSathishkumar SamiappanL. Agilandeeswari