Classifying a Limited Number of the Bamboo Species by the Transformation of Convolution Groups

Xiu Jin, Xianzhi Zhu
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引用次数: 1

Abstract

For agricultural special species, the labeled procedure of large-scale samples is costly, thus, the bamboo species only has a limited number for supervised learning. The fine-tuning strategy is important for deep neural network by transferring learning methods, which utilize the weight of the deep model of the source domain, and can solve the problem associated with insufficient samples to make the model more stability and robustness. In the manuscript, the novelty of the strategy, for images of bamboo species with low-shot classification, mainly proposed an idea that is the transfer of the convolutional group features of deep convolutional models. The deep models with a novel fine-tuning method and three optimizers that are stochastic gradient descent, Adaptive Moment estimation, and Adadelta respectively, are evaluated by the accuracy and the expected calibration error value for the analysis of deep model generalization. An analysis of the results showed that, based on the proportion of training dataset is only 30%, the innovative strategy for bamboo species classification achieved better performance that has an accuracy of 0.82, and the expected calibration error of 0.16, which were better stability and generalization than those of other fine-tuning strategies. Consequently, the novel fine-tuning strategy proposed in this manuscript transfers the features of deep convolutional groups, improves the accuracy and generalizability of the model, and resolves the problems associated with having insufficient samples of bamboo species for low-shot classification.
用卷积群变换对有限数量的竹种进行分类
对于农业特殊物种,大规模样本的标记过程成本较高,因此,用于监督学习的竹物种数量有限。深度神经网络的微调策略是一种重要的迁移学习方法,它利用源域深度模型的权重,可以解决样本不足的问题,使模型更具稳定性和鲁棒性。在本文中,该策略的新颖性,针对竹类图像的低像素分类,主要提出了一种思想,即深度卷积模型的卷积群特征的转移。采用一种新的微调方法和随机梯度下降、自适应矩估计和Adadelta三种优化器分别对深度模型的精度和期望校准误差值进行了评价,用于深度模型泛化分析。结果分析表明,在训练数据占比仅为30%的情况下,创新策略对竹子物种分类的准确率为0.82,预期校准误差为0.16,具有较好的稳定性和泛化性。因此,本文提出的新的微调策略转移了深度卷积群的特征,提高了模型的准确性和泛化性,解决了竹种样本不足进行低采样分类的问题。
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