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Improving land-cover classification accuracy with a patch-based convolutional neural network: data augmentation and purposive sampling

机译:使用基于补丁的卷积神经网络提高土地覆盖分类的准确性:数据扩充和目标抽样

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The unit of classification in land-cover mapping is generally divided into two main categories: pixel and object. When it comes to medium-resolution images, a pixel has generally been used as a unit of classification because the object-based approach is often not as effective due to its coarse resolution. Recently, however, the patch-based approach for land-cover classification has shown higher accuracy levels than the pixel-based approach by exploiting the informative features from neighboring pixels. In this study, the light convolutional neural network (LCNN) was used as a patch-based classification algorithm, and two methods to further improve the classification accuracy for patch-based algorithms were addressed. First, data augmentation by flipping and rotation was applied to LCNN to check if its classification accuracy can increase. Second, the purposive sampling, which considers the heterogeneity of a map, was applied to LCNN. This study shows that the classification accuracy of LCNN can be further improved by data augmentation and purposive sampling and thus confirms that the patch-based approach has a distinct advantage over the pixel-based approach.
机译:土地覆被制图的分类单位通常分为两大类:像素和对象。当涉及中等分辨率的图像时,像素通常被用作分类单位,因为基于对象的方法由于其粗略分辨率而通常不那么有效。然而,近来,通过利用来自相邻像素的信息特征,用于基于土地的分类的基于补丁的方法已经显示出比基于像素的方法更高的准确度。在这项研究中,光卷积神经网络(LCNN)被用作基于补丁的分类算法,并提出了两种进一步提高基于补丁的算法的分类精度的方法。首先,将通过翻转和旋转进行的数据增强应用于LCNN,以检查其分类精度是否可以提高。其次,将考虑地图异质性的有目的抽样应用于LCNN。这项研究表明,通过数据扩充和有目的的采样可以进一步提高LCNN的分类精度,从而证明基于补丁的方法比基于像素的方法具有明显的优势。

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