Denoising Convolutional Variational Autoencoders-Based Feature Learning for Automatic Detection of Plant Diseases

Vicky Zilvan, A. Ramdan, Endang Suryawati, R. B. S. Kusumo, Dikdik Krisnandi, H. Pardede
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引用次数: 11

Abstract

Early detection is critical for maintaining quantity and quality of farming commodity. Currently, detection of plant diseases still requires human expertise and/or need microscopic identification such as spectroscopic technique and molecular biological. So, it would be very costly and time consuming, and hence unattainable for small-holder farmers. The rapid development of intelligent agriculture using machine learning has led the widespread use of computer or smart-phones to solve this problem. So, early detection of plant disease can be performed with minimal support from human experts and microscopic identification is no longer needed. However, conventional machine-learning techniques are limited in their ability to process raw data directly. So it require some efforts and domain expertise to design feature extractor to support it. Moreover, impulse noise such as salt-pepper noise may present on the images and it arises another challenge to provide a robust system. In this paper, we present denoising convolutional variational autoencoders as automatic unsupervised feature extractor and automatic denoiser to learn and to extract good features directly from the raw data. Here, we use the output of denoising convolutional variational auto encoders as inputs to fully connected networks classifiers for automatic detection of plant diseases. Our experiments show the average accuracies of our method is better than denoising variational autoencoders which is built using fully deep connected networks architectures. We also found that our proposed method is more robust against noisy test data.
基于卷积变分自编码器的去噪特征学习用于植物病害自动检测
早期发现对保持农产品的数量和质量至关重要。目前,植物病害的检测仍然需要人类的专业知识和/或需要显微鉴定,如光谱技术和分子生物学。因此,这将是非常昂贵和耗时的,因此对小农来说是不可能实现的。利用机器学习的智能农业的快速发展导致了计算机或智能手机的广泛使用来解决这一问题。因此,植物病害的早期检测可以在人类专家的最小支持下进行,不再需要显微镜鉴定。然而,传统的机器学习技术在直接处理原始数据的能力上是有限的。因此,需要一些努力和领域的专业知识来设计特征提取器来支持它。此外,脉冲噪声如椒盐噪声可能出现在图像上,这是提供一个鲁棒系统的另一个挑战。在本文中,我们提出去噪卷积变分自编码器作为自动无监督特征提取器和自动去噪器,直接从原始数据中学习和提取良好的特征。在这里,我们使用去噪卷积变分自编码器的输出作为全连接网络分类器的输入,用于自动检测植物病害。我们的实验表明,我们的方法的平均精度优于去噪变分自编码器,它是使用全深度连接网络架构构建的。我们还发现我们的方法对噪声测试数据具有更强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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