Attallah Omneya
Department of Electronics and Communications Engineering, College of Engineering and Technology, Arab Academy for Science, Technology and Maritime Transport, Alexandria 1029, Egypt.
Biomimetics (Basel). 2023 Sep 7;8(5):417. doi: 10.3390/biomimetics8050417.
Rice paddy diseases significantly reduce the quantity and quality of crops, so it is essential to recognize them quickly and accurately for prevention and control. Deep learning (DL)-based computer-assisted expert systems are encouraging approaches to solving this issue and dealing with the dearth of subject-matter specialists in this area. Nonetheless, a major generalization obstacle is posed by the existence of small discrepancies between various classes of paddy diseases. Numerous studies have used features taken from a single deep layer of an individual complex DL construction with many deep layers and parameters. All of them have relied on spatial knowledge only to learn their recognition models trained with a large number of features. This study suggests a pipeline called "RiPa-Net" based on three lightweight CNNs that can identify and categorize nine paddy diseases as well as healthy paddy. The suggested pipeline gathers features from two different layers of each of the CNNs. Moreover, the suggested method additionally applies the dual-tree complex wavelet transform (DTCWT) to the deep features of the first layer to obtain spectral-temporal information. Additionally, it incorporates the deep features of the first layer of the three CNNs using principal component analysis (PCA) and discrete cosine transform (DCT) transformation methods, which reduce the dimension of the first layer features. The second layer's spatial deep features are then combined with these fused time-frequency deep features. After that, a feature selection process is introduced to reduce the size of the feature vector and choose only those features that have a significant impact on the recognition process, thereby further reducing recognition complexity. According to the results, combining deep features from two layers of different lightweight CNNs can improve recognition accuracy. Performance also improves as a result of the acquired spatial-spectral-temporal information used to learn models. Using 300 features, the cubic support vector machine (SVM) achieves an outstanding accuracy of 97.5%. The competitive ability of the suggested pipeline is confirmed by a comparison of the experimental results with findings from previously conducted research on the recognition of paddy diseases.
稻田病害会显著降低作物的产量和质量,因此快速准确地识别它们对于预防和控制至关重要。基于深度学习(DL)的计算机辅助专家系统是解决这一问题以及应对该领域主题专家短缺的令人鼓舞的方法。尽管如此,各类稻田病害之间存在的微小差异构成了一个主要的泛化障碍。许多研究使用了从具有许多深层和参数的单个复杂DL结构的单个深层提取的特征。它们都仅依赖空间知识来学习使用大量特征训练的识别模型。本研究提出了一种基于三个轻量级卷积神经网络(CNN)的管道“RiPa-Net”,该管道可以识别和分类九种稻田病害以及健康稻田。所提出的管道从每个CNN的两个不同层收集特征。此外,所提出的方法还将双树复数小波变换(DTCWT)应用于第一层的深层特征以获得频谱-时间信息。此外,它使用主成分分析(PCA)和离散余弦变换(DCT)变换方法合并三个CNN第一层的深层特征,这降低了第一层特征的维度。然后将第二层的空间深层特征与这些融合的时频深层特征相结合。之后,引入特征选择过程以减小特征向量的大小并仅选择那些对识别过程有重大影响的特征,从而进一步降低识别复杂度。根据结果,结合来自两个不同轻量级CNN层的深层特征可以提高识别准确率。用于学习模型的获取的空间-频谱-时间信息也提高了性能。使用300个特征,立方支持向量机(SVM)实现了97.5%的出色准确率。通过将实验结果与先前关于稻田病害识别的研究结果进行比较,证实了所提出管道的竞争力。