College of Human Development and Health, National Taipei University of Nursing and Health Sciences, Taipei 11219, Taiwan.
Xin Ji International Company, New Taipei 234014, Taiwan.
Int J Environ Res Public Health. 2021 Jan 22;18(3):961. doi: 10.3390/ijerph18030961.
Identifying plants is not only the job of professionals, but also useful or essential for the plant lover and the general public. Although deep learning approaches for plant recognition are promising, driven by the success of convolutional neural networks (CNN), their performances are still far from the requirements of an in-field scenario. First, we propose a central attention concept that helps focus on the target instead of backgrounds in the image for tree species recognition. It could prevent model training from confused vision by establishing a dual path CNN deep learning framework, in which the central attention model combined with the CNN model based on InceptionV3 were employed to automatically extract the features. These two models were then learned together with a shared classification layer. Experimental results assessed the effectiveness of our proposed approach which outperformed each uni-path alone, and existing methods in the whole plant recognition system. Additionally, we created our own tree image database where each photo contained a wealth of information on the entire tree instead of an individual plant organ. Lastly, we developed a prototype system of an online/offline available tree species identification working on a consumer mobile platform that can identify the tree species not only by image recognition, but also detection and classification in real-time remotely.
识别植物不仅是专业人员的工作,对于植物爱好者和普通大众来说也是有用的或必不可少的。尽管基于卷积神经网络(CNN)的深度学习方法在植物识别方面很有前景,但它们的性能仍然远远不能满足现场场景的要求。首先,我们提出了一个中心注意概念,它可以帮助模型将注意力集中在图像中的目标上,而不是背景上,从而进行树种识别。它可以通过建立一个双路径 CNN 深度学习框架来防止模型训练受到混淆的视觉影响,在这个框架中,我们使用中心注意模型和基于 InceptionV3 的 CNN 模型自动提取特征。然后,这两个模型一起学习,共享一个分类层。实验结果评估了我们提出的方法的有效性,该方法在整个植物识别系统中优于每个单一的路径,并且优于现有的方法。此外,我们创建了自己的树木图像数据库,其中每张照片都包含关于整棵树的丰富信息,而不是单个植物器官。最后,我们开发了一个基于消费者移动平台的在线/离线树种识别原型系统,该系统不仅可以通过图像识别,还可以通过实时远程检测和分类来识别树种。