首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Using Texture Analysis To Improve Per-pixel Classification Of Very High Resolution Images For Mapping Plastic Greenhouses
【24h】

Using Texture Analysis To Improve Per-pixel Classification Of Very High Resolution Images For Mapping Plastic Greenhouses

机译:使用纹理分析改进用于绘制塑料温室的超高分辨率图像的按像素分类

获取原文
获取原文并翻译 | 示例
       

摘要

The area occupied by plastic-covered greenhouses has undergone rapid growth in recent years, currently exceeding 500,000 ha worldwide. Due to the vast amount of input (water, fertilisers, fuel, etc.) required, and output of different agricultural wastes (vegetable, plastic, chemical, etc.), the environmental impact of this type of production system can be serious if not accompanied by sound and sustainable territorial planning. For this, the new generation of satellites which provide very high resolution imagery, such as QuickBird and IKONOS can be useful. In this study, one QuickBird and one IKONOS satellite image have been used to cover the same area under similar circumstances. The aim of this work was an exhaustive comparison of QuickBird vs. IKONOS images in land-cover detection. In terms of plastic greenhouse mapping, comparative tests were designed and implemented, each with separate objectives. Firstly, the Maximum Likelihood Classification (MLC) was applied using five different approaches combining R, G, B, N1R, and panchromatic bands. The combinations of the bands used, significantly influenced some of the indexes used to classify quality in this work. Furthermore, the quality classification of the QuickBird image was higher in all cases than that of the IKONOS image. Secondly, texture features derived from the panchromatic images at different window sizes and with different grey levels were added as a fifth band to the R, G, B, NIR images to carry out the MLC. The inclusion of texture information in the classification did not improve the classification quality. For classifications with texture information, the best accuracies were found in both images for mean and angular second moment texture parameters. The optimum window size in these texture parameters was 3 x 3 for IK images, while for QB images it depended on the quality index studied, but the optimum window size was around 15 x 15. With regard to the grey level, the optimum was 128. Thus, the optimum texture parameter depended on the main objective of the image classification. If the main classification goal is to minimize the number of pixels wrongly classified, the mean texture parameter should be used, whereas if the main classification goal is to minimize the unclassified pixels the angular second moment texture parameter should be used. On the whole, both QuickBird and IKONOS images offered promising results in classifying plastic greenhouses.
机译:近年来,被塑料覆盖的温室所占面积迅速增长,目前全球已超过500,000公顷。由于所需的大量投入(水,肥料,燃料等)以及不同农业废物(蔬菜,塑料,化学制品等)的产出,这种生产系统对环境的影响可能非常严重。伴随着完善而可持续的领土规划。为此,提供高分辨率图像的新一代卫星(如QuickBird和IKONOS)可能会有用。在这项研究中,在相似的情况下,使用了一张QuickBird和一张IKONOS卫星图像来覆盖同一区域。这项工作的目的是对QuickBird和IKONOS影像在土地覆盖探测中的详尽比较。在塑料温室制图方面,设计并实施了比较测试,每个测试都有各自的目标。首先,使用五种不同的方法将最大似然分类(MLC)应用于R,G,B,N1R和全色波段。所使用频段的组合极大地影响了这项工作中用于对质量进行分类的一些指标。此外,在所有情况下,QuickBird图像的质量分类都比IKONOS图像的质量分类高。其次,将来自不同窗口尺寸和不同灰度级别的全色图像得出的纹理特征作为第五波段添加到R,G,B,NIR图像中,以执行MLC。分类中包含纹理信息并不能提高分类质量。对于带有纹理信息的分类,在图像中均值和角度第二矩纹理参数均找到了最佳精度。对于IK图像,这些纹理参数中的最佳窗口大小为3 x 3,而对于QB图像,最佳窗口大小取决于所研究的质量指标,但是最佳窗口大小约为15 x15。就灰度而言,最佳值为128因此,最佳纹理参数取决于图像分类的主要目标。如果主要分类目标是最小化错误分类的像素数量,则应使用平均纹理参数,而如果主要分类目标是最小化未分类的像素,则应使用角度二阶矩纹理参数。总体而言,QuickBird和IKONOS图像在对塑料大棚进行分类方面都提供了令人鼓舞的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号