基于图像的森林物种自动识别:21世纪木材学的挑战与机遇

Geovanni Figueroa-Mata, Erick Mata-Montero, Juan Carlos Valverde-Otarola, Dagoberto Arias-Aguilar
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引用次数: 15

摘要

快速准确地识别森林物种是支持其保护、可持续管理,更具体地说,是打击非法采伐的基础。传统上,识别是通过使用基于树木物理特征的二分类或多分类密钥来完成的。然而,当树木被砍伐,从自然环境中移走时,这些技术就没什么用了,因此,关于所有这些特征的信息只有部分子集。在这些情况下,可以利用木材的解剖特征,这些特征受环境因素的影响较小,因此在鉴定中具有很高的诊断价值。几年来,计算机已被用于通过交互式密钥和访问全球数字图像存储库等方式来支持身份识别过程。然而,基于机器学习的技术最近被开发出来并成功地应用于植物和动物物种的识别。因此,自动或半自动技术已被提出,以支持植物学家、分类学家和非专家在物种鉴定过程中。本文概述了这些技术的应用,以及目前基于木质素样本的森林物种鉴定面临的挑战和机遇。
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Automated Image-based Identification of Forest Species: Challenges and Opportunities for 21st Century Xylotheques
The fast and accurate identification of forest species is fundamental to support their conservation, sustainable management, and, more specifically, the fight against illegal logging. Traditionally, identifications are done by using dichotomous or polytomous keys based on physical characteristics of trees. However, these techniques are of little use when the trees have been cut, removed from their natural environment, and consequently there is only a partial subset of information on all those traits. In these cases, it may be possible to resort to the anatomical characteristics of the wood, which are less affected by environmental factors and therefore have a high diagnostic value in the identification. For some years now, computers have been used to support the identification processes through interactive keys and access to global repositories of digital images, among others. However, techniques based on machine learning have recently been developed and applied successfully to the identification of both plant and animal species. Consequently, automatic or semiautomatic techniques have been proposed to support botanists, taxonomists and non-experts in the species identification process. This article presents an overview of the use of these techniques as well as the current challenges and opportunities for the identification of forest species based on xylotheque samples.
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