首页> 外文会议>22nd Annual Canadian Remote Sensing Symposium Aug 21-25, 2000, Victoria, British Columbia, Canada >The Effects of Polygon Boundary Pixels on Image Classification Accuracy
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The Effects of Polygon Boundary Pixels on Image Classification Accuracy

机译:多边形边界像素对图像分类精度的影响

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The purpose of this study is to analyze the effects that pixels, located at polygon boundaries, have on classification accuracy. Pixels found along the borders of polygons usually contain mixed spectral information, and can be detrimental to classification accuracy. Discriminant analysis was used to predict land cover classes, found in Canada's National Forest Inventory, from a Landsat TM image. The discriminant criteria were derived on a test area of the image, using buffered and non-buffered polygons as training data, and applied to a validate area of the image. Buffering the polygons had no overall positive or negative effect on classification accuracy. There are non-trivial effects for specific cover types, especially the water categories, but the classification accuracy for most categories changed by less than 10% due to buffering. Overall accuracy is quite low as well, usually less than 50%, which suggests that discriminant analysis may not be suited for predicting National Forest Inventory land cover classes from Landsat TM images.
机译:这项研究的目的是分析位于多边形边界的像素对分类精度的影响。沿多边形边界发现的像素通常包含混合的光谱信息,并且可能对分类精度不利。判别分析用于根据Landsat TM影像预测加拿大国家森林清单中的土地覆盖类别。使用缓冲和非缓冲多边形作为训练数据,在图像的测试区域上得出判别标准,并将其应用于图像的验证区域。缓冲多边形对分类精度没有整体正面或负面影响。对于特定的覆盖类型,尤其是水类别,存在不平凡的影响,但是由于缓冲,大多数类别的分类准确性变化不到10%。总体准确度也很低,通常低于50%,这表明判别分析可能不适合根据Landsat TM图像预测国家森林清单土地覆盖类别。

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