Padeep: A Patched Deep Learning Based Model for Plants Recognition on Small Size Dataset: Chenopodiaceae Case Study

Ahmad Heidary-Sharifabad, M. S. Zarchi, G. Zarei
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Abstract

A large training sample is prerequisite for the successful training of each deep learning model for image classification. Collecting a large dataset is time-consuming and costly, especially for plants. When a large dataset is not available, the challenge is how to use a small or medium size dataset to train a deep model optimally. To overcome this challenge, a novel model is proposed to use the available small size plant dataset efficiently. This model focuses on data augmentation and aims to improve the learning accuracy by oversampling the dataset through representative image patches. To extract the relevant patches, ORB key points are detected in the training images and then image patches are extracted using an innovative algorithm. The extracted ORB image patches are used for dataset augmentation to avoid overfitting during the training phase. The proposed model is implemented using convolutional neural layers, where its structure is based on ResNet architecture. The proposed model is evaluated on a challenging ACHENY dataset. ACHENY is a Chenopodiaceae plant dataset, comprising 27030 images from 30 classes. The experimental results show that the patch-based strategy outperforms the classification accuracy achieved by traditional deep models by 9%.
Padeep:基于补丁深度学习的小数据集植物识别模型:藜科案例研究
大的训练样本是每个图像分类深度学习模型训练成功的前提。收集大型数据集既耗时又昂贵,尤其是对植物而言。当没有大型数据集时,挑战在于如何使用小型或中型数据集来最佳地训练深度模型。为了克服这一挑战,提出了一种新的模型来有效地利用现有的小型工厂数据集。该模型以数据增强为重点,通过代表性图像patch对数据集进行过采样,提高学习精度。为了提取相关的patch,首先在训练图像中检测ORB关键点,然后使用一种创新的算法提取图像patch。提取的ORB图像块用于数据集增强,以避免训练阶段的过拟合。该模型使用卷积神经层实现,其结构基于ResNet架构。该模型在一个具有挑战性的ACHENY数据集上进行了评估。ACHENY是藜科植物数据集,包含来自30个类的27030张图像。实验结果表明,基于patch的分类准确率比传统深度模型的分类准确率提高了9%。
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