Sachar Silky, Kumar Anuj
Department of Computer Science and Applications, Panjab University, Chandigarh, India.
Int J Inf Technol. 2022;14(6):3089-3097. doi: 10.1007/s41870-022-01055-z. Epub 2022 Aug 12.
The therapeutic nature of medicinal plants and their ability to heal many diseases raises the need for their automatic identification. Different parts of plants that help in their identification include root, fruit, bark, stem but leaf images have been widely used as they are an abundant source of information and are also easily available. This work explores the branch of Artificial Intelligence, called deep learning, and proposes an Ensemble learning approach to rapidly detect medicinal plants using the leaf image. The medicinal leaf dataset consists of 30 classes. Transfer learning approach was used to initialize the parameters and pre-train Neural networks namely MobileNetV2, InceptionV3, and ResNet50. These component models were used to extract features from the input images and the softmax layer connected to the Dense Layer was used as the classifier to train the models on the concerned dataset. The obtained accuracies were validated using threefold and fivefold cross-validation. The Ensemble Deep Learning- Automatic Medicinal Leaf Identification (EDL-AMLI) classifier based on the weighted average of the component model outputs was used as the final classifier. It was observed that the EDL-AMLI outperformed the state-of-the-art pre-trained models such as MobileNetV2, InceptionV3, and ResNet50 by achieving 99.66% accuracy on the test set and average accuracy of 99.9% using threefold and fivefold cross validation.
药用植物的治疗特性及其治愈多种疾病的能力引发了对其进行自动识别的需求。有助于植物识别的不同部位包括根、果实、树皮、茎,但叶片图像因其是丰富的信息来源且易于获取而被广泛使用。这项工作探索了人工智能的一个分支——深度学习,并提出了一种集成学习方法,用于使用叶片图像快速检测药用植物。药用叶片数据集包含30个类别。采用迁移学习方法初始化参数并预训练神经网络,即MobileNetV2、InceptionV3和ResNet50。这些组件模型用于从输入图像中提取特征,连接到全连接层的softmax层用作分类器,在相关数据集上训练模型。使用三倍和五倍交叉验证对获得的准确率进行验证。基于组件模型输出加权平均值的集成深度学习——自动药用叶片识别(EDL-AMLI)分类器用作最终分类器。结果表明,EDL-AMLI在测试集上的准确率达到99.66%,使用三倍和五倍交叉验证的平均准确率为99.9%,优于诸如MobileNetV2、InceptionV3和ResNet50等最先进的预训练模型。