Shikha SinghAngshul MajumdarÉmilie ChouzenouxGiovanni Chierchia
This work addresses the problem of hyperspectral image classification when the number of labeled samples is very small (few shot learning). Our work is based on the recently proposed framework of convolutional transform learning. In this work, we propose a semi-supervised version of deep convolutional transform learning. We compare with four recent studies which are tailored for solving the few-shot learning problem in hyperspectral classification. Results show that our method can improve over the state-of-the-art.
Xudong KangBinbin ZhuoPuhong Duan
Sourish Gunesh DhekaneShivam TiwariManan Sharma
Qingyan WangMeng ChenJunping ZhangShouqiang KangYujing Wang