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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Study on Ensemble Crop Information Extraction of Remote Sensing Images Based on SVM and BPNN
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Study on Ensemble Crop Information Extraction of Remote Sensing Images Based on SVM and BPNN

机译:基于SVM和BPNN的遥感图像集合作物信息提取研究

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摘要

High resolution remote sensing image contains abundant information, but remote sensing classification only based on spectral information is affected in the complex spectrum area. Crop area and other land-cover objects contain different texture features. This paper extracts texture information based on gray-level co-occurrence matrix and Gabor filters group, sets up spectrum-texture joint feature set. To enhance classification efficiency, Ensemble learning strategy is introduced to improve classical support vector machine and back propagation neural network classifiers in training process. To prove the effectiveness of proposed methods, several experiment images are utilized to execute experiments. Results indicate that proposed methods improve classification accuracy compared with classical algorithms significantly, and promote running efficiency compared with the situation of large sample, support corn area statistical process and yield estimation.
机译:高分辨率遥感图像包含丰富的信息,但仅基于光谱信息的遥感分类在复杂的频谱区域中受到影响。 作物区和其他陆地覆盖物体包含不同的纹理特征。 本文提取基于灰度共发生矩阵和Gabor过滤器组的纹理信息,设置频谱纹理联合功能集。 为了提高分类效率,引入了集合学习策略,以改善培训过程中的古典支持向量机和后传播神经网络分类器。 为了证明所提出的方法的有效性,使用几种实验图像来执行实验。 结果表明,与大型样品的情况相比,提出了与经典算法相比的分类准确性,并促进了运行效率,支持玉米区域统计过程和产量估计。

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