Information Technology Department, Faculty of Computers and Artificial Intelligence, Cairo University, Giza, Egypt.
School of Computing and Mathematic Sciences, University of Leicester, East Midlands, Leicester, United Kingdom.
PLoS One. 2024 Jul 30;19(7):e0305292. doi: 10.1371/journal.pone.0305292. eCollection 2024.
As agricultural technology continues to develop, the scale of planting and production of date fruit is increasing, which brings higher yields. However, the increasing yields also put a lot of pressure on the classification step afterward. Image recognition based on deep learning algorithms can help to identify and classify the date fruit species, even in natural light.
In this paper, a deep fusion model based on whale optimization and an artificial neural network for Arabian date classification is proposed. The dataset used in this study includes five classes of date fruit images (Barhi, Khalas, Meneifi, Naboot Saif, Sullaj). The process of designing each model can be divided into three phases. The first phase is feature extraction. The second phase is feature selection. The third phase is the training and testing phase. Finally, the best-performing model was selected and compared with the currently established models (Alexnet, Squeezenet, Googlenet, Resnet50).
The experimental results show that, after trying different combinations of optimization algorithms and classifiers, the highest test accuracy achieved by DeepDate was 95.9%. It takes less time to achieve a balance between classification accuracy and time consumption. In addition, the performance of DeepDate is better than that of many deep transfer learning models such as Alexnet, Squeezenet, Googlenet, VGG-19, NasNet, and Inception-V3.
The proposed DeepDate improves the accuracy and efficiency of classifying date fruits and achieves better results in classification metrics such as accuracy and F1. DeepDate provides a promising classification solution for date fruit classification with higher accuracy. To further advance the industry, it is recommended that stakeholders invest in technology transfer programs to bring advanced image recognition and AI tools to smaller producers, enhancing sustainability and productivity across the sector. Collaborations between agricultural technologists and growers could also foster more tailored solutions that address specific regional challenges in date fruit production.
随着农业技术的不断发展,红枣的种植和生产规模不断扩大,产量也越来越高。然而,产量的增加也给后续的分类工作带来了很大的压力。基于深度学习算法的图像识别可以帮助识别和分类枣的品种,甚至在自然光下也可以。
本文提出了一种基于鲸鱼优化算法和人工神经网络的阿拉伯枣分类深度融合模型。本研究使用的数据集包括五类枣果图像(巴希、哈拉什、梅内菲、纳布特·赛义夫、苏拉杰)。设计每个模型的过程可以分为三个阶段。第一阶段是特征提取。第二阶段是特征选择。第三阶段是训练和测试阶段。最后,选择性能最好的模型,并与现有的模型(Alexnet、Squeezenet、Googlenet、Resnet50)进行比较。
实验结果表明,在尝试了不同的优化算法和分类器组合后,DeepDate 的最高测试准确率为 95.9%。它在分类精度和时间消耗之间取得了更好的平衡。此外,DeepDate 的性能优于许多深度迁移学习模型,如 Alexnet、Squeezenet、Googlenet、VGG-19、NasNet 和 Inception-V3。
所提出的 DeepDate 提高了枣果分类的准确性和效率,在准确率和 F1 等分类指标上取得了更好的结果。DeepDate 为枣果分类提供了一种有前景的分类解决方案,具有更高的准确性。为了进一步推动该行业的发展,建议利益相关者投资技术转让计划,将先进的图像识别和人工智能工具引入到规模较小的生产者中,提高整个行业的可持续性和生产力。农业技术专家和种植者之间的合作也可以促进更具针对性的解决方案,解决枣果生产中特定地区的挑战。