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A Review on Back-Propagation Neural Networks in the Application of Remote Sensing Image Classification 被引量:2

A Review on Back-Propagation Neural Networks in the Application of Remote Sensing Image Classification
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摘要 ANNs (Artificial neural networks) are used extensively in remote sensing image processing. It has been proven that BPNNs (back-propagation neural networks) have high attainable classification accuracy. However, there is a noticeable variation in the achieved accuracies due to different network designs and implementations. Hence, researchers usually need to conduct several experimental trials before they can finalize the network design. This is a time consuming process which significantly reduces the effectiveness of using BPNNs and the final design may still not be optimal. Therefore, there is a need to see whether there are some common guidelines for effective design and implementation of BPNNs. With this aim in mind, this paper attempts to find and summarize the common guidelines suggested by different authors through literature review and discussion of the findings. To provide readers with background and contextual information, some ANN fundamentals are also introduced.
出处 《Journal of Earth Science and Engineering》 2015年第1期52-65,共14页 地球科学与工程(英文版)
关键词 Artificial neural networks back propagation CLASSIFICATION remote sensing. BP神经网络 遥感图像分类 应用 人工神经网络 网络设计 评论 遥感图像处理 上下文信息
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  • 1Atkinson, P., and Tatnall, A. 1997. "Introduction Neural Networks in Remote Sensing." International Journal of Remote Sensing 18 (4): 699-709.
  • 2Jindal, S., and Josan, G. 2007. "Neural Network and Fuzzy Logic Approach for Satellite Image Classification: A Review." In Proceedings of COLT, 1-4.
  • 3Jiang, J., Zhang, J., Yang, G., Zhang, D., and Zhang, L. 2010. "Application of Back Propagation Neural Network in the Classification of High Resolution Remote Sensing Image: Take Remote Sensing linage of Beijing for Instance." In Proceedings of 18th International Conference on Geoinformatics, IEEE, 1-6.
  • 4Nicoletti, G. 2000. "An Analysis of Neural Networks as Simulators and Emulators." Cybernetics and Systems 31 (3): 253-82.
  • 5Alsmadi, M., Omar, K., and Noah, S. 2009. "Back Propagation Algorithm: The Best Algorithm among the Multi-layer Perceptron Algorithm," 1JCSNS International Journal of Computer Science and Network Security 9 (4): 378-83.
  • 6Abu-Mahfouz, I. 2005. "A Comparative Study of Three Artificial Neural Networks for the Detection and Classification of Gear Faults." International Journal of General Systems 34 (3): 261-77.
  • 7Graupe, D. 2007. Principles of Artificial Neural Networks, Singapore, Hackensack, N. J.: World Scientific.
  • 8Rojas, R. 1996. Neural Networks." A Systematic Introduction. Berlin: Springer.
  • 9Wang, T. S., Chen, L., Tan, C. H., Yeh, H. C., and Tsai, Y. C. 2009. "BPN for Land Cover Classification by Using Remotely Sensed Data." In Proceedings of Fifth International Conference on Natural Computation, IEEE, 535-9.
  • 10Richards, J. 2006, Remote Sensing Digital Image Analysis, Berlin: Springer-Verlag.

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