Deep Learning Application for Plant Classification on Unbalanced Training Set

R. S. Pereira, F. Porto
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引用次数: 1

Abstract

Deep learning models expect a reasonable amount of training in- stances to improve prediction quality. Moreover, in classification problems, the occurrence of an unbalanced distribution may lead to a biased model. In this paper, we investigate the problem of species classification from plant images, where some species have very few image samples. We explore reduced versions of imagenet Neural Network winners architecture to filter the space of candi- date matches, under a target accuracy level. We show through experimental results using real unbalanced plant image datasets that our approach can lead to classifications within the 5 best positions with high probability.
深度学习在非平衡训练集上的植物分类应用
深度学习模型需要合理数量的训练来提高预测质量。此外,在分类问题中,不平衡分布的出现可能导致模型偏倚。本文研究了基于植物图像的物种分类问题,其中一些物种的图像样本非常少。我们探索了imagenet神经网络赢家架构的简化版本,以在目标精度水平下过滤候选日期匹配的空间。我们使用真实的不平衡植物图像数据集的实验结果表明,我们的方法可以高概率地在5个最佳位置内进行分类。
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