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Transfer Learning Approach in Automatic Tropical Wood Recognition System

机译:自动热带木材识别系统转移学习方法

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Automatic recognition of tropical wood species is a very challenging task due to the lack of discriminative features among intra wood species and very discriminative features among inter class species. While many conventional pattern recognition algorithms have been implemented and proven to solve wood image classification with 100% accuracy, when using deep learning however, the classification accuracy drops tremendously to only 36.3% due to small number of training samples. Deep learning requires large number of samples in order to work well, unfortunately, wood samples provided by the national forest institute are limited. In this paper, we explore the use of transfer learning in deep neural network for the classification of tropical wood species based on image analysis. Several model of deep learning techniques are tested and results have shown that the classification performance after transfer learning was added reaches 100% accuracy.
机译:由于缺乏木材种类和类别的种类中的歧视性,自动识别热带木质物种是一个非常具有挑战性的任务。虽然已经实施了许多传统的模式识别算法并证明以100%的精度来解决木材图像分类,但使用深度学习时,由于少量训练样本,分类精度下降至仅36.3%。深入学习需要大量样品以便运作良好,不幸的是,国家森林研究所提供的木样品有限。本文基于图像分析,探讨了在深神经网络中进行了转移学习的使用。测试了多种深入学习技术模型,结果表明,增加了转移学习后的分类性能达到100%的精度。

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