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Deep Learning Applied to Identification of Commercial Timber Species from Peru

机译:深度学习在秘鲁商业木材物种识别中的应用

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Automatic identification of timber species is a necessity and a challenge in several aspects, especially for government institutions in charge of monitoring forestry resources. In this paper, we propose a methodology to develop an efficient computational model to identify wood samples of seven commercial timber species chosen according to availability of samples properly classified by specialists. For this, we created image sets of wood of seven timber species using a portable digital microscope connected to a personal computer. These images were divided into patches and grouped into training, validation and test sets, with which a convolutional neuronal network was trained. It consist of four layers: two convolutional layers with max pooling and two fully connected layers at the output. Previously, three image patch sizes were evaluated to find the highest accuracy value, precision and sensitivity for the identification. The results show a good performance of the computational model with an accuracy of 94.05% and precision and sensitivity values around 90%, under proposed conditions.
机译:在几个方面,自动识别木材种类是必要的,也是一个挑战,特别是对于负责监控林业资源的政府机构而言。在本文中,我们提出了一种方法,可以开发一种有效的计算模型,以根据根据专家正确分类的样本的可用性来识别选择的7种商品木材的木材样本。为此,我们使用连接到个人计算机的便携式数字显微镜创建了七个木材种类的木材图像集。这些图像被分成补丁,并分为训练,验证和测试集,通过它们训练卷积神经元网络。它由四层组成:两个具有最大池化的卷积层和两个完全连接的输出层。以前,对三种图像补丁大小进行了评估,以找到最高的准确度值,精确度和灵敏度进行识别。结果表明,在建议的条件下,该计算模型具有良好的性能,精度为94.05%,精度和灵敏度值约为90%。

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