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基于双高斯的紧凑型偏振光谱成像方法设计与研究 期刊论文
光谱学与光谱分析, 2023, 卷号: 43, 期号: 7
作者:  亓晨;  于涛;  张周锋;  钟菁菁;  刘宇阳;  王雪霁;  胡炳樑
Adobe PDF(1046Kb)  |  收藏  |  浏览/下载:100/0  |  提交时间:2023/08/22
偏振成像光谱系统  像素偏振调制  线性渐变滤光  系统耦合  
基于分段边缘拟合的测风多普勒差分干涉仪成像热漂移监测方法 期刊论文
物理学报, 2022, 卷号: 71, 期号: 8
作者:  张亚飞;  冯玉涛;  傅頔;  畅晨光;  李娟;  白清兰;  胡炳樑
Adobe PDF(4387Kb)  |  收藏  |  浏览/下载:165/2  |  提交时间:2022/05/09
大气风场测量  多普勒差分干涉仪  干涉成像  像面漂移  
Spatial weighted kernel spectral angle constraint method for hyperspectral change detection 期刊论文
Journal of Applied Remote Sensing, 2022, 卷号: 16, 期号: 1
作者:  Liu, Song;  Song, Liyao;  Li, Haiwei;  Chen, Junyu;  Zhang, Geng;  Hu, Bingliang;  Wang, Shuang;  Li, Siyuan
Adobe PDF(3507Kb)  |  收藏  |  浏览/下载:111/1  |  提交时间:2022/05/07
change detection  hyperspectral image  kernel  spectral angle  
Importance of the parallel polarization radiance for estimating inorganic particle concentrations in turbid waters based on radiative transfer simulations 期刊论文
International Journal of Remote Sensing, 2020
作者:  Liu, Jia;  Hu, Bingliang;  He, Xianqiang;  Bai, Yan;  Tian, Liqiao;  Chen, Tieqiao;  Wang, Yihao;  Pan, Delu
Adobe PDF(3855Kb)  |  收藏  |  浏览/下载:220/4  |  提交时间:2020/03/10
DISC: Deep Image Saliency Computing via Progressive Representation Learning 期刊论文
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2016, 卷号: 27, 期号: 6, 页码: 1135-1149
作者:  Chen, Tianshui;  Lin, Liang;  Liu, Lingbo;  Luo, Xiaonan;  Li, Xuelong
Adobe PDF(4845Kb)  |  收藏  |  浏览/下载:450/1  |  提交时间:2016/09/19
Convolutional Neural Network (Cnn)  Image Labeling  Representation Learning  Saliency Detection  
Style transformed synthetic images for real world gaze estimation by using residual neural network with embedded personal identities 期刊论文
Applied Intelligence
作者:  Wang, Quan;  Wang, Hui;  Dang, Ruo-Chen;  Zhu, Guang-Pu;  Pi, Hai-Feng;  Shic, Frederick;  Hu, Bing-liang
Adobe PDF(2492Kb)  |  收藏  |  浏览/下载:237/0  |  提交时间:2022/05/17
Appearance-based  ID-ResNet  Style transfer  Fine-tune  Learning by synthesis