School of Systems Engineering, Kochi University of Technology, 185 Miyanokuchi, Tosayamada, Kami 782-8502, Kochi, Japan.
Department of Civil Engineering, Faculty of Engineering, Sri Lanka Institute of Information Technology, Malabe 10115, Sri Lanka.
Sensors (Basel). 2022 Jun 10;22(12):4401. doi: 10.3390/s22124401.
Automated fruit identification is always challenging due to its complex nature. Usually, the fruit types and sub-types are location-dependent; thus, manual fruit categorization is also still a challenging problem. Literature showcases several recent studies incorporating the Convolutional Neural Network-based algorithms (VGG16, Inception V3, MobileNet, and ResNet18) to classify the Fruit-360 dataset. However, none of them are comprehensive and have not been utilized for the total 131 fruit classes. In addition, the computational efficiency was not the best in these models. A novel, robust but comprehensive study is presented here in identifying and predicting the whole Fruit-360 dataset, including 131 fruit classes with 90,483 sample images. An algorithm based on the Cascaded Adaptive Network-based Fuzzy Inference System (Cascaded-ANFIS) was effectively utilized to achieve the research gap. Color Structure, Region Shape, Edge Histogram, Column Layout, Gray-Level Co-Occurrence Matrix, Scale-Invariant Feature Transform, Speeded Up Robust Features, Histogram of Oriented Gradients, and Oriented FAST and rotated BRIEF features are used in this study as the features descriptors in identifying fruit images. The algorithm was validated using two methods: iterations and confusion matrix. The results showcase that the proposed method gives a relative accuracy of 98.36%. The Fruit-360 dataset is unbalanced; therefore, the weighted precision, recall, and FScore were calculated as 0.9843, 0.9841, and 0.9840, respectively. In addition, the developed system was tested and compared against the literature-found state-of-the-art algorithms for the purpose. Comparison studies present the acceptability of the newly developed algorithm handling the whole Fruit-360 dataset and achieving high computational efficiency.
由于其复杂性,自动水果识别一直具有挑战性。通常,水果类型和子类是位置相关的;因此,手动水果分类仍然是一个具有挑战性的问题。文献展示了一些最近的研究,这些研究结合了基于卷积神经网络的算法(VGG16、Inception V3、MobileNet 和 ResNet18)对 Fruit-360 数据集进行分类。然而,它们都不全面,也没有被用于总共 131 种水果类别。此外,这些模型的计算效率不是最好的。这里提出了一种新颖、强大但全面的研究方法,用于识别和预测整个 Fruit-360 数据集,包括 131 个水果类别,共有 90483 个样本图像。基于级联自适应网络模糊推理系统(Cascaded-ANFIS)的算法被有效地利用来弥补这一研究空白。颜色结构、区域形状、边缘直方图、列布局、灰度共生矩阵、尺度不变特征变换、快速鲁棒特征、方向梯度直方图和方向 FAST 旋转 BRIEF 特征被用作识别水果图像的特征描述符。该算法使用两种方法进行验证:迭代和混淆矩阵。结果表明,所提出的方法的相对精度为 98.36%。Fruit-360 数据集是不平衡的;因此,计算了加权精度、召回率和 FScore,分别为 0.9843、0.9841 和 0.9840。此外,还针对该目的对开发的系统进行了测试和与文献中发现的最先进算法进行了比较。比较研究表明,新开发的算法能够处理整个 Fruit-360 数据集,并具有较高的计算效率,是可以接受的。