基于加速鲁棒特征的绿色区域图像映射检测

F. L. Afriansyah, N. Muna, Ika Widiastuti, N. Fanani, F. Purnomo
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引用次数: 1

摘要

发展测绘和遥感来探测大范围的绿色区域,可以利用无人机进行航空摄影。该航拍照片是使用相机拍摄的小画幅航拍照片。从航空照片中得到的图像仍然是支离破碎的。因此,有必要对每个序列图像进行合并。合并是通过根据像素的相似点缝合每个图像来检测区域的映射来完成的。该方法应用于搜索相似特征使用加速鲁棒特征(SURF)。得到的结果可以看到特征映射区域的相似程度,从而不需要很长时间就可以合并到一个检测区域。应用SURF方法,给出与最小均方误差(MSE)水平0.0246对应的图像数量的结果。得到的结果是匹配点32处的相似度,根据航拍照片的绿色区域给出了接近映射的全景视图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Mapping Detection of Green Areas Using Speed Up Robust Features
Development of mapping and remote sensing to detection of green areas in a wide range can do aerial photography using drones. The aerial photo in question is a small format aerial photo using a camera. The image produced from aerial photographs is still fragmented into separate parts. Therefore, it is necessary to merge each sequential image. Merging is done by detecting the mapping of the area by sewing each image based on the point of similarity in pixels. The method applied with the search for similar features uses the Speeded Up Robust Features (SURF). The results obtained to see the level of similarity in the feature mapping area so that the merger into one detected area does not require a long time. The SURF method is applied, giving the results of the number of images that correspond to the Minimum Mean Square Error (MSE) level of 0.0246. The results obtained are the level of similarity at matched point 32 gives a panoramic view approaching the mapping according to the green area of the aerial photo.
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