Chenming Li, Xiaoyu Qu, Yao Yang, Hongmin Gao, Yongchang Wang, Dan Yao, and Wenjing Yuan
[1] H.-L. Tang, K. Liu, B. Ai, and L. Liu, Comparison analysisbetween different fusion methods for the case of WorldView-2images, Beijing Surveying and Mapping, 5, 2013, 1–7. [2] S. Zhou, C. Chen, and J. Yue, Extracting roads from high-resolution RS images based on shape priors and graph cuts,Acta Geodaetica et Cartographica Sinica, 43(1), 2014, 60–65. [3] Y. Cao, Z. Wang, L. Sheng, X. Xiao, et al., Fusion of pixel-based and object-based features for road centerline extractionfrom high-resolution satellite imagery, Acta Geodaetica etCartographica Sinica, 45(10), 2016, 1231–1240. [4] Y. Chen, J.-S. Zhao, and Y.-Y. Chen, ENVI based urbangreen space information extraction with high resolution remotesensing data, Engineering of Surveying and Mapping, 4, 2015,33–36. [5] L. Shen, H. Tang, S. Wang, and L. Zhang, River extractionfrom the high resolution remote sensing image based on spatially correlated pxels template and adboost algorithm, ActaGeodaetica et Cartographica Sinica, 42(3), 2013, 344–350. [6] J. Chen, T. Chen, X. Mei, et al., Hilly farmland extraction fromhigh resolution remote sensing imager based on optimal scaleselection, Transactions of the Chinese Society of AgriculturalEngineering (Transactions of the CSAE), 30(5), 2014, 99–107. [7] J. Chen, T. Chen, H. Liu, et al., Hierarchical extraction offarmland from high-resolution remote sensing imagery, Trans-actions of the Chinese Society of Agricultural Engineering(Transactions of the CSAE), 31(3), 2015, 190–198. [8] T. Gan, J.-P. Li, X.-Q. Li, and L.-W. Wang, Object-orientedmethod of building damage extraction from high-resolutionimages, Engineering of Surveying and Mapping, 2015(4), 11–15. [9] Y. Liu and Q. Li, Damaged building detection from high resolution remote sensing images by integrating multiple features,Geomatics & Spatial Information Technology, 41(06), 2018,61–64. [10] Y.-Y. Yuan, H.-Y. Mao, L. Peng, C, Hu, et al., Research andimplementation of high resolution image disaster recognition,Computer Knowledge and Technology, 14, 2018, 199–202. [11] C. Zhang, Z. Li, P. Li, J. Yang, et al., Urban-rural land use planmonitoring based on high spatial resolution remote sensingimagery classification, Transactions of the Chinese Society forAgricultural Machinery, 46(11), 2015, 323–329. [12] L. Wang and Q.-Y. Liu, The methods summary of optimalsegmentation scale selection in high-resolution remote sensingimages multi-scale segmentation, Geomatics & Spatial Information Technology, 3, 2015, 166–169. [13] C. Zhu, S. Yang, S. Cui, W. Cheng, et al., Accuracy evaluatingmethod for object-based segmentation of high resolution remotesensing image, High Power Laser and Particle Beams, 27(6),2015, 37–43. [14] Q. Zhao, L. Gu, and Y. Li, High resolution remote sensingimage segmentation based on region similarity, Chinese Journalof Scientific Instrument, 39(2), 2018, 257–264. [15] C.-Y. Wang, A.-G. Xu, Y. Jang, and X.-M. Zhao, Intervaltype-2 fuzzy based neural network for high resolution remotesensing image segmentation, Journal of Signal Processing, 5,2017, 711–720. [16] W.-C. Wang and W.-B. Zou, Methods of extraction in highresolution remote sensing image information, Beijing Surveyingand Mapping, 4, 2013, 1–5. [17] D. Yang, A. Lu, and J. Wang, Classification of cooked beef,lamb, and pork using hyperspectral imaging, InternationalJournal of Robotics & Automation, 33(3), 2018, 293–301. [18] Z. Yanling, D. Bimin, and W. Zhanrong, Analysis and study ofperceptron to solve XOR problem, in The International Work-shop on Autonomous Decentralized System, Beijing, China(Piscataway, NJ: IEEE, 2002), 168–173. [19] L. Zhu and X. Li, BBO optimization method for image classification based on multi-layer perceptron, Journal of SichuanNormal University (Natural Science), 38(6), 2015, 930–937. [20] Z. Cheng, Research and Application of Large Scale Multi-layer Perceptron Neural Network, Jilin University, Jilin Sheng,China, 2016. [21] Y. Huang, X. Duan, S. Sun, and W. Lang, A study of trainingalgorithm in deep neural networks based on sigmoid activationfunction, Computer Measurement & Control, 25(2), 2017,126–129. [22] S. Wang and G. Teng, Optimal design of ReLU activationfunction in convolutional neural networks, Information &Communications, 2018(1), 2018, 42–43. [23] Z. Guo Ziyan, X. Shu, C. Liu, and L. Li, A recognition algorithmof flower based on convolution neural network with ReLUfunction, Computer Technology and Development, 28(05), 2018,154–157+163. [24] R. Sharma and R.K. Panigrahi, Stokes based sigma filter fordespeckling of compact PolSAR data, Iet Radar Sonar &Navigation, 12(4), 2018, 475–483. [25] L. Wu, S. Wei, B. Zhou, Y. Chen, et al., Hierarchical extremelearning machine gesture recognition method based on PCA dimension reduction, Electronic Measurement Technology, 40(3),2017, 82–88. [26] J.R. Zhang, J. Zhang, T.M. Lok, et al., A hybrid particle swarmoptimization–back-propagation algorithm for feedforward neural network training, Applied Mathematics & Computation,185(2), 2007, 1026–1037. [27] Y. Cao and Y. Zhao, Research on computer intelligent im-age recognition technology based on GA-BP neural network,Applied Laser, 37(1), 2017, 139–143.
Important Links:
Go Back