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Bark Classification of Trees Using K-Nearest Neighbor & Nearest Neighbor Algorithms

机译:使用K最近邻和最近邻算法的树皮分类

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Pakistan is an agricultural country and less than 4 % of area secured with forests. Tree automatic classification based on computer science and it is the developing trend of classification. In this paper we examine how we can done bark classification of trees using k-nearest neighbor and nearest neighbor algorithms. There we discuss how these algorithms can be used to automatically classify trees from images of bark. We get the images of five kinds of different trees names suppose as A, B, C, D and E through using digital camera. We take ten different images of each kind of trees. The capability and information of inspectors are essential to perfectly achieve this process. The all the process will be done in computer vision image processing tool. In this tool we use the Histogram Features, Texture Features, and Pattern Classification. We achieved the final results of five kinds of different trees using nearest neighbor on distance two 82% average and on k-nearest neighbor when k=2 then the average result 82%, when k=3 the average result 82%, when k=4 then the average result 76% and when k=5 the average percentage 72% the result shows the maximum correct result and classifies the trees. These are the best percentage results using these algorithms for classification. In this way we can easily classify the different trees and also these methods provide opportunity to farmer and other people for identify and select the different better different trees for getting more benefit.
机译:巴基斯坦是一个农业大国,只有不到4%的森林得到保护。基于计算机的树型自动分类是分类的发展趋势。在本文中,我们研究了如何使用k最近邻算法和最近邻算法对树进行树皮分类。在那里,我们讨论了如何使用这些算法从树皮图像中自动对树木进行分类。通过使用数码相机,我们得到了五种不同的树名的图像,分别为A,B,C,D和E。我们为每种树木拍摄十张不同的图像。检查员的能力和信息对于完美实现此过程至关重要。所有过程将在计算机视觉图像处理工具中完成。在此工具中,我们使用直方图特征,纹理特征和图案分类。我们使用距离最近的两个邻居的平均距离为82%,使用k最近邻的邻居获得了五种不同树的最终结果,当k = 2时,则平均结果为82%,当k = 3时,平均结果为82%,当k = 4,则平均结果为76%,当k = 5时,平均百分比为72%,结果显示最大正确结果并对树进行分类。这些是使用这些算法进行分类的最佳百分比结果。这样,我们可以轻松地对不同的树进行分类,而且这些方法还为农民和其他人提供了机会来识别和选择不同的更好的不同树以获取更多利益。

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