基于轻量级 G-PPW-VGG11 模型的大田小麦品种分类

Yu Pan, Xun Yu, Jihua Dong, Yonghang Zhao, Shuanming Li, Xiuliang Jin
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引用次数: 0

摘要

在农业,尤其是小麦种植中,农民通常采用多品种种植策略,以降低与单一种植相关的收获风险。然而,由于小麦品种之间存在细微的形态差异,因此准确区分小麦品种在技术上具有挑战性。传统的品种分类方法依赖于专家知识,在现代智能农业管理中效率低下。现有的许多分类模型计算复杂、内存密集,难以在移动设备上有效部署。G-PPW-VGG11 巧妙地结合了部分卷积(PConv)和部分混合深度可分离卷积(PMConv),降低了计算复杂度和特征冗余。同时,结合 ECANet 这一高效的信道关注机制,可以精确捕捉叶片信息并有效抑制背景噪声。此外,G-PPW-VGG11 还用两个点状卷积层和一个全局平均池化层取代了传统 VGG11 的全连接层,大大减少了内存占用,提高了非线性表达能力和训练效率。与 VGG11 相比,G-PPW-VGG11 的准确率提高了 5.89%,推理速度加快了 35.44%,内存使用量减少了 99.64%。G-PPW-VGG11 在分类准确率和推理速度方面也超过了传统的轻量级网络。值得注意的是,G-PPW-VGG11 已成功部署在安卓系统上,并在实际环境中对其性能进行了评估。结果显示,分类准确率为 84.67%,每幅图像的平均时间为 291.04ms,这验证了该模型在实际农业小麦品种分类中的可行性,为智能管理奠定了基础。为便于今后的研究,我们将公开训练好的模型和完整的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of field wheat varieties based on a lightweight G-PPW-VGG11 model
In agriculture, especially wheat cultivation, farmers often use multi-variety planting strategies to reduce monoculture-related harvest risks. However, the subtle morphological differences among wheat varieties make accurate discrimination technically challenging. Traditional variety classification methods, reliant on expert knowledge, are inefficient for modern intelligent agricultural management. Numerous existing classification models are computationally complex, memory-intensive, and difficult to deploy on mobile devices effectively. This study introduces G-PPW-VGG11, an innovative lightweight convolutional neural network model, to address these issues.G-PPW-VGG11 ingeniously combines partial convolution (PConv) and partially mixed depthwise separable convolution (PMConv), reducing computational complexity and feature redundancy. Simultaneously, incorporating ECANet, an efficient channel attention mechanism, enables precise leaf information capture and effective background noise suppression. Additionally, G-PPW-VGG11 replaces traditional VGG11’s fully connected layers with two pointwise convolutional layers and a global average pooling layer, significantly reducing memory footprint and enhancing nonlinear expressiveness and training efficiency.Rigorous testing showed G-PPW-VGG11's superior performance, with an impressive 93.52% classification accuracy and only 1.79MB memory usage. Compared to VGG11, G-PPW-VGG11 showed a 5.89% increase in accuracy, 35.44% faster inference, and a 99.64% reduction in memory usage. G-PPW-VGG11 also surpasses traditional lightweight networks in classification accuracy and inference speed. Notably, G-PPW-VGG11 was successfully deployed on Android and its performance evaluated in real-world settings. The results showed an 84.67% classification accuracy with an average time of 291.04ms per image.This validates the model's feasibility for practical agricultural wheat variety classification, establishing a foundation for intelligent management. For future research, the trained model and complete dataset are made publicly available.
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