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利用卷积神经网络和类别激活映射技术识别和提取 42 种树的树皮关键特征。

Identifying and extracting bark key features of 42 tree species using convolutional neural networks and class activation mapping.

机构信息

Department of Agriculture, Forestry and Bioresources, Seoul National University, Seoul, 08826, Republic of Korea.

Interdisciplinary Program in Agricultural and Forest Meteorology, Seoul National University, Seoul, 08826, Republic of Korea.

出版信息

Sci Rep. 2022 Mar 19;12(1):4772. doi: 10.1038/s41598-022-08571-9.

DOI:10.1038/s41598-022-08571-9
PMID:35306532
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8934343/
Abstract

The significance of automatic plant identification has already been recognized by academia and industry. There were several attempts to utilize leaves and flowers for identification; however, bark also could be beneficial, especially for trees, due to its consistency throughout the seasons and its easy accessibility, even in high crown conditions. Previous studies regarding bark identification have mostly contributed quantitatively to increasing classification accuracy. However, ever since computer vision algorithms surpassed the identification ability of humans, an open question arises as to how machines successfully interpret and unravel the complicated patterns of barks. Here, we trained two convolutional neural networks (CNNs) with distinct architectures using a large-scale bark image dataset and applied class activation mapping (CAM) aggregation to investigate diagnostic keys for identifying each species. CNNs could identify the barks of 42 species with > 90% accuracy, and the overall accuracies showed a small difference between the two models. Diagnostic keys matched with salient shapes, which were also easily recognized by human eyes, and were typified as blisters, horizontal and vertical stripes, lenticels of various shapes, and vertical crevices and clefts. The two models exhibited disparate quality in the diagnostic features: the old and less complex model showed more general and well-matching patterns, while the better-performing model with much deeper layers indicated local patterns less relevant to barks. CNNs were also capable of predicting untrained species by 41.98% and 48.67% within the correct genus and family, respectively. Our methodologies and findings are potentially applicable to identify and visualize crucial traits of other plant organs.

摘要

自动植物识别的意义已经得到学术界和工业界的认可。已经有一些尝试利用树叶和花朵进行识别; 然而,树皮也可能是有益的,特别是对于树木,因为它在整个季节都保持一致,而且即使在树冠较高的情况下也很容易获取。以前关于树皮识别的研究主要是为了提高分类准确性做出了定量贡献。然而,自从计算机视觉算法超越了人类的识别能力以来,一个悬而未决的问题是机器如何成功地解释和揭示树皮复杂的模式。在这里,我们使用大规模的树皮图像数据集训练了两个具有不同架构的卷积神经网络 (CNN),并应用类激活映射 (CAM) 聚合来研究识别每个物种的诊断特征。CNN 可以识别 42 个物种的树皮,准确率超过 90%,两个模型的总体准确率差异很小。诊断特征与明显的形状相匹配,这些形状也很容易被人眼识别,其特征为水泡、水平和垂直条纹、各种形状的皮孔、垂直裂缝和裂隙。两个模型在诊断特征方面表现出不同的质量: 旧的、不太复杂的模型显示出更通用和匹配良好的模式,而具有更深层的性能更好的模型则显示出与树皮关系不大的局部模式。CNN 还可以分别以 41.98%和 48.67%的准确率预测未训练的物种属于正确的属和科。我们的方法和发现可能适用于识别和可视化其他植物器官的关键特征。

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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6a5d/8934343/e33c8b7b6c87/41598_2022_8571_Fig7_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6a5d/8934343/2c46b174dc0b/41598_2022_8571_Fig1_HTML.jpg
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