Desert Plants Recognition by Bark Texture

Najlaa Alsaedi, Hanan Alahmadi, Liyakathunisa Syed
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Abstract

Recognition of the desert plants is a challenging task for human as well as computers due to the similarities between these plants. We propose a novel method for recognizing of desert plants by the images of the bark. We extract the features of the texture of the bark using Weber Local Descriptor (WLD), we build a dataset of bark images for desert plants, this dataset consists of 1660 bark images for five species of the desert plants, these species are Palm Dates, Mimosa Scabrella, Sidr, Lemon and Pomegranate. We test three classifiers ANN, SVM and KNN on this dataset and the resulted accuracies are 99.7%, 98.8% and 98.0%, respectively. Performance of ANN is very high when compared to SVM and KNN classifiers, hence ANN can be adapted for recognition of the desert plants.
利用树皮纹理识别沙漠植物
由于这些植物之间的相似性,识别沙漠植物对人类和计算机来说都是一项具有挑战性的任务。提出了一种利用树皮图像识别荒漠植物的新方法。利用Weber局部描述符(WLD)提取树皮的纹理特征,构建了沙漠植物树皮图像数据集,该数据集包含5种沙漠植物的1660张树皮图像,这5种植物分别是棕榈枣、含水草、Sidr、柠檬和石榴。我们在该数据集上测试了ANN、SVM和KNN三种分类器,结果准确率分别为99.7%、98.8%和98.0%。与支持向量机(SVM)和KNN分类器相比,人工神经网络(ANN)的分类性能非常高,因此可以用于沙漠植物的识别。
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