Deep Learning of Path-Based Tree Classifiers for Large-Scale Plant Species Identification

Haixi Zhang, G. He, Jinye Peng, Zhenzhong Kuang, Jianping Fan
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引用次数: 21

Abstract

In this paper, a deep learning framework is devel- oped to enable path-based tree classifier training for supporting large-scale plant species recognition, where a deep neural network and a tree classifier are jointly trained in an end-to-end fashion. First, a two-layer plant taxonomy is constructed to organize large numbers of plant species and their genus hierarchically in a coarse- to-fine fashion. Second, a deep learning framework is developed to enable path-based tree classifier training, where a tree classifier over the plant taxonomy is used to replace the flat softmax layer in traditional deep CNNs. A path-based error function is defined to optimize the joint process for learning deep CNN and tree classifier, where back propagation is used to update both the classifier parameters and the network weights simultaneously. We have also constructed a large-scale plant database of Orchid family for algorithm evaluation. Our experimental results have demonstrated that our path-based deep learning algorithm can achieve very competitive results on both the accuracy rates and the computational efficiency for large-scale plant species recognition.
基于路径的树分类器深度学习的大规模植物物种识别
在本文中,开发了一个深度学习框架,以支持基于路径的树分类器训练,以支持大规模植物物种识别,其中深度神经网络和树分类器以端到端方式联合训练。首先,构建了一个双层植物分类系统,将大量的植物物种及其属按粗到细的顺序进行分类。其次,开发了一个深度学习框架来实现基于路径的树分类器训练,其中使用基于植物分类的树分类器来取代传统深度cnn中的平面softmax层。定义了基于路径的误差函数来优化深度CNN和树分类器的联合学习过程,其中使用反向传播同时更新分类器参数和网络权值。我们还构建了兰科大型植物数据库,用于算法评价。我们的实验结果表明,我们的基于路径的深度学习算法在大规模植物物种识别的准确率和计算效率上都取得了非常有竞争力的结果。
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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