论文标题

从嘈杂标签的校正元学习,用于鲁棒的基于图像的植物性诊断

Rectified Meta-Learning from Noisy Labels for Robust Image-based Plant Disease Diagnosis

论文作者

Shi, Ruifeng, Zhai, Deming, Liu, Xianming, Jiang, Junjun, Gao, Wen

论文摘要

植物疾病是对粮食安全和作物生产的主要威胁之一。因此,利用最近的人工智能进展来帮助植物疾病诊断很有价值。一种流行的方法是将此问题转变为叶图像分类任务,然后可以通过强大的卷积神经网络(CNN)来解决。但是,基于CNN的分类方法的性能取决于大量高质量手动标记的训练数据,这些数据不可避免地在实践中在标签上引入噪声,从而导致模型过度拟合和性能退化。为了克服这个问题,我们提出了一个新颖的框架,该框架将整流的元学习模块纳入常见的CNN范式中,以在不使用额外的监督信息的情况下训练噪音般的深层网络。所提出的方法享有以下优点:i)整流的元学习旨在更加关注无偏见的样本,从而导致加速收敛和提高的分类准确性。 ii)我们的方法是自由假设标签噪声分布的方法,该标签噪声分布在各种噪声上都很好。 iii)我们的方法用作插件模块,可以将其嵌入通过基于梯度下降的方法优化的任何深层模型中。进行了广泛的实验,以证明我们的算法优于最先进的实验。

Plant diseases serve as one of main threats to food security and crop production. It is thus valuable to exploit recent advances of artificial intelligence to assist plant disease diagnosis. One popular approach is to transform this problem as a leaf image classification task, which can be then addressed by the powerful convolutional neural networks (CNNs). However, the performance of CNN-based classification approach depends on a large amount of high-quality manually labeled training data, which are inevitably introduced noise on labels in practice, leading to model overfitting and performance degradation. To overcome this problem, we propose a novel framework that incorporates rectified meta-learning module into common CNN paradigm to train a noise-robust deep network without using extra supervision information. The proposed method enjoys the following merits: i) A rectified meta-learning is designed to pay more attention to unbiased samples, leading to accelerated convergence and improved classification accuracy. ii) Our method is free on assumption of label noise distribution, which works well on various kinds of noise. iii) Our method serves as a plug-and-play module, which can be embedded into any deep models optimized by gradient descent based method. Extensive experiments are conducted to demonstrate the superior performance of our algorithm over the state-of-the-arts.

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