Faculty of Automatic Control and Computer Science, University Politehnica of Bucharest, 060042 Bucharest, Romania.
National Institute for Research and Development in Informatics, 011455 Bucharest, Romania.
Sensors (Basel). 2022 Mar 31;22(7):2696. doi: 10.3390/s22072696.
Recent studies have approached the identification of foliar plant diseases using artificial intelligence, but in these works, classification is achieved using only one side of the leaf. Phytopathology specifies that there are diseases that show similar symptoms on the upper part of the leaf, but different ones on the lower side. An improvement in accuracy can be achieved if the symptoms of both sides of the leaf are considered when classifying plant diseases. In this context, it is necessary to establish whether the captured image represents the leaf on its upper or lower side. From the research conducted using botany books, we can conclude that a useful classification feature is color, because the sun-facing part is greener, while the opposite side is shaded. A second feature is the thickness of the primary and secondary veins. The veins of a leaf are more prominent on the lower side, compared to the upper side. A third feature corresponds to the concave shape of the leaf on its upper part and its convex shape on the lower part. In this study, we aim to achieve upper and lower leaf side classification using both deep learning methods and machine learning models.
最近的研究已经开始使用人工智能来识别叶片植物病害,但在这些工作中,分类仅使用叶片的一侧来完成。植物病理学规定,有些疾病在叶片的上半部分表现出相似的症状,但在下半部分则不同。如果在对植物病害进行分类时考虑叶片的两侧症状,那么可以提高准确性。在这种情况下,有必要确定所捕获的图像是代表叶片的上侧还是下侧。从使用植物学书籍进行的研究中,我们可以得出结论,颜色是一个有用的分类特征,因为面向太阳的部分更绿,而相反的一侧则是阴影。第二个特征是主脉和次脉的厚度。与上侧相比,叶片的下侧的叶脉更为明显。第三个特征对应于叶片上侧的凹形和下侧的凸形。在这项研究中,我们旨在使用深度学习方法和机器学习模型来实现对叶片上侧和下侧的分类。