首页> 外文会议>Pattern Recognition, 2009. CCPR 2009 >Soil Erosion Remote Sensing Image Retrieval Based on Semi-Supervised Learning
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Soil Erosion Remote Sensing Image Retrieval Based on Semi-Supervised Learning

机译:基于半监督学习的土壤侵蚀遥感图像反演

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Soil erosion is one of the most typical natural disasters in China. However, due to the limitation of current technology, the investigation of soil erosion through remote sensing images is currently by human beings manually which depends on human interpretation and interactive selection. The work burden is so heavy that errors are usually inevitably unavoidable. This paper proposes the technique of content-based image retrieval to tackle this problem. Due to the large amount of computation in co-training retrieval based on multiple classifier systems, and for the purpose of improving efficiency, an improved approach using co-training in two classifier systems is proposed in this paper. Prior to retrieving, we firstly select the optimal color feature and texture feature respectively, and then use the corresponding color classifier and texture classifier for co-training. By this approach, the time of co-training is reduced greatly, meanwhile, the selected optimal features can represent color and texture features better for remote sensing image, resulting in better retrieval accuracy. Experimental results show that the improved approach using co-training in two classifier systems needs less amount of computation and less retrieval time, while it can lead to better retrieval results.
机译:水土流失是中国最典型的自然灾害之一。然而,由于当前技术的局限性,人类目前正在人工通过遥感图像研究土壤侵蚀,这取决于人类的解释和交互选择。工作负担如此沉重,通常不可避免地会出现错误。本文提出了基于内容的图像检索技术来解决这个问题。由于基于多个分类器系统的协同训练检索需要大量的计算,并且为提高效率,本文提出了一种在两个分类器系统中使用协同训练的改进方法。在检索之前,我们首先分别选择最佳的颜色特征和纹理特征,然后使用相应的颜色分类器和纹理分类器进行协同训练。通过这种方法,可以大大减少协同训练的时间,同时,所选择的最优特征可以更好地代表遥感图像的色彩和纹理特征,从而获得更好的检索精度。实验结果表明,在两个分类器系统中使用协同训练的改进方法需要较少的计算量和较少的检索时间,同时可以带来更好的检索结果。

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