Tree Log Identity Matching using Convolutional Correlation Networks

Mikko Vihlman, Jakke Kulovesi, A. Visala
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引用次数: 1

Abstract

Log identification is an important task in silviculture and forestry. It involves matching tree logs with each other and telling which of the known individuals a given specimen is. Forest harvesters can image the logs and assess their quality while cutting trees in the forest. Identification allows each log to be traced back to the location it was grown in and efficiently choosing logs of specific quality in the sawmill. In this paper, a deep two-stream convolutional neural network is used to measure the likelihood that a pair of images represents the same part of a log. The similarity between the images is assessed based on the cross-correlation of the convolutional feature maps at one or more levels of the network. The performance of the network is evaluated with two large datasets, containing either spruce or pine logs. The best architecture identifies correctly 99% of the test logs in the spruce dataset and 97% of the test logs in the pine dataset. The results show that the proposed model performs very well in relatively good conditions. The analysis forms a basis for future attempts to utilize deep networks for log identification in challenging real-world forestry applications.
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使用卷积相关网络的树日志恒等式匹配
木材鉴定是造林和林业的一项重要工作。它包括将原木相互匹配,并告诉给定标本是已知个体中的哪一个。森林采伐人员可以在森林中砍伐树木时对原木进行成像并评估其质量。识别允许每根原木追溯到它生长的位置,并有效地在锯木厂选择特定质量的原木。在本文中,使用深度双流卷积神经网络来测量一对图像代表日志的同一部分的可能性。图像之间的相似性是基于卷积特征映射在网络的一个或多个层次上的相互关联来评估的。该网络的性能用两个大数据集进行评估,其中包含云杉或松树原木。最好的体系结构可以正确识别云杉数据集中99%的测试日志和松树数据集中97%的测试日志。结果表明,该模型在相对较好的条件下表现良好。该分析为今后在具有挑战性的现实世界林业应用中利用深度网络进行日志识别奠定了基础。
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