融合ViT技术和图像滤波的深度学习植物病虫害识别

Van-Dung Hoang, Thanh-an Michel Pham
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引用次数: 0

摘要

十多年来,与传统的机器学习方法相比,使用卷积神经网络(CNN)架构的深度学习方法在精度标准上取得了突破。然而,当这些方法应用于大样本和硬数据集时,仍然面临一些处理时间和精度的限制。近年来,一些基于变形学习方法的新方法被应用到图像处理中。这种方向方法在精度和计算时间方面显示了有希望的结果。提出了一种将图像滤波预处理技术与视觉变换学习技术相结合的植物病虫害识别方法。该方法首先进行基于神经网络的图像滤波,然后将结果通过ViT模块提取特征映射,再馈送到多头网络进行分类。该方法在将结果传递到ViT处理阶段之前,采用图像滤波预处理来突出特征,而不是从原始输入图像中使用ViT。此外,在频域中的元素明智乘法减少了处理时间,而不是在空间域中使用卷积处理。实验结果表明,与直接使用ViT相比,应用滤波预处理不会显著增加学习参数的数量和训练时间,并且与基于深度CNN的知名模型相比,它可以提高准确率。研究结果还表明,与基于cnn的深度学习方法相比,ViT解决方案和提出的方法达到了更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion of ViT Technique and Image Filtering in Deep Learning for Plant Pests and Diseases Recognition
Over a decade, deep learning methods using convolutional neural network (CNN) architecture have achieved breakthroughs in the precision criterion, which compared to the traditional machine learning methods. However, those approaches still faced some limitations of processing time and precision when they are applied to large samples and hard datasets. Recently, some new methods based on the transformer learning approach have been applied to image processing. This direction approach has illustrated the promising results in the terms of accuracy and computational time. This paper presents a new approach, which combines a pre-processing technique of image filtering and vision transformer (ViT) learning for the problem of plant insect pests and diseases recognition. The proposed solution involves some stages: neural network-based image filtering, then passes results through a ViT module to extract feature map, and then fed to multiple head network for classification. The proposed method applies image filtering pre-processing to highlight features before passing results to the ViT processing stage instead of using ViT from raw input images. Furthermore, element-wise multiplication in the frequency domain reduces processing time instead of using convolutional processing in the spatial domain. Experimental results demonstrate that applying filtering preprocessing does not significantly increase the number of learning parameters and training time compared to using ViT directly and it leverages to improve accuracy to compare to well-known models based on deep CNN. The research results also illustrated that the ViT solution and the proposed method are reached more accurate than CNN-based deep learning methods.
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