Numerous diseases cause severe economic loss in the apple production-based industry. Early disease identification in apple leaves can help to stop the spread of infections and provide better productivity. Therefore, it is crucial to study the identification and classification of different apple foliar diseases. Various traditional machine learning and deep learning methods have addressed and investigated this issue. However, it is still challenging to classify these diseases because of their complex background, variation in the diseased spot in the images, and the presence of several symptoms of multiple diseases on the same leaf. This paper proposes a novel transfer learning-based stacked ensemble architecture named MCFFA-Net, which is composed of three pre-trained architectures named MobileNetV2, DenseNet201, and InceptionResNetV2 as backbone networks. We also propose a novel multi-scale dilated residual convolution module to capture multi-scale contextual information with several dilated receptive fields from the extracted features. Channel-based attention mechanism is provided through squeeze and excitation networks to make the MCFFA-Net focused on the relevant information in the multi-receptive fields. The proposed MCFFA-Net achieves a classification accuracy of 90.86%.
翻译:苹果生产行业的多种疾病造成了严重的经济损失。苹果叶中的早期疾病识别有助于阻止感染的蔓延并提高生产力。因此,研究不同苹果叶子疾病的识别和分类至关重要。各种传统机器学习和深层学习方法已经解决并调查了这一问题。然而,对这些疾病进行分类仍具有挑战性,因为其背景复杂,图像中的疾病点不同,以及在同一叶子上存在多种疾病的症状。本文件提议建立一个新型的基于学习的堆叠式混合结构,名为MCFFA-Net,由三个预先培训的建筑组成,分别名为MopalNetV2、DenseNet201和InvitionResNetV2作为主干网。我们还提议了一个新型的多尺度扩展残余演动模块,以获取具有若干不同开阔开阔开阔开阔场的多层背景信息。基于频道的注意机制通过挤压和激发网络提供,使MCFFA-Net以多感应领域相关信息为重点。提议的MCFA-Net实现了90.86%的准确性。