Malik Owais A, Ismail Nazrul, Hussein Burhan R, Yahya Umar
School of Digital Science, Universiti Brunei Darussalam, Jln Tungku Link, Gadong BE1410, Brunei.
Department of Computer Science and Information Technology, Islamic University in Uganda, Kampala P.O. Box 7689, Uganda.
Plants (Basel). 2022 Jul 27;11(15):1952. doi: 10.3390/plants11151952.
The identification of plant species is fundamental for the effective study and management of biodiversity. In a manual identification process, different characteristics of plants are measured as identification keys which are examined sequentially and adaptively to identify plant species. However, the manual process is laborious and time-consuming. Recently, technological development has called for more efficient methods to meet species' identification requirements, such as developing digital-image-processing and pattern-recognition techniques. Despite several existing studies, there are still challenges in automating the identification of plant species accurately. This study proposed designing and developing an automated real-time plant species identification system of medicinal plants found across the Borneo region. The system is composed of a computer vision system that is used for training and testing a deep learning model, a knowledge base that acts as a dynamic database for storing plant images, together with auxiliary data, and a front-end mobile application as a user interface to the identification and feedback system. For the plant species identification task, an EfficientNet-B1-based deep learning model was adapted and trained/tested on a combined public and private plant species dataset. The proposed model achieved 87% and 84% Top-1 accuracies on a test set for the private and public datasets, respectively, which is more than a 10% accuracy improvement compared to the baseline model. During real-time system testing on the actual samples, using our mobile application, the accuracy slightly dropped to 78.5% (Top-1) and 82.6% (Top-5), which may be related to training data and testing conditions variability. A unique feature of the study is the provision of crowdsourcing feedback and geo-mapping of the species in the Borneo region, with the help of the mobile application. Nevertheless, the proposed system showed a promising direction toward real-time plant species identification system.
植物物种的识别是生物多样性有效研究和管理的基础。在人工识别过程中,植物的不同特征被作为识别关键指标进行测量,这些指标会被依次且适应性地检查以识别植物物种。然而,人工过程既费力又耗时。近年来,技术发展需要更高效的方法来满足物种识别需求,比如开发数字图像处理和模式识别技术。尽管已有多项研究,但在准确实现植物物种识别自动化方面仍存在挑战。本研究提出设计并开发一个针对婆罗洲地区发现的药用植物的自动化实时植物物种识别系统。该系统由一个用于训练和测试深度学习模型的计算机视觉系统、一个作为动态数据库用于存储植物图像及辅助数据的知识库,以及一个作为识别和反馈系统用户界面的前端移动应用组成。对于植物物种识别任务,采用了基于EfficientNet - B1的深度学习模型,并在一个公共和私有植物物种数据集的组合上进行训练/测试。所提出的模型在私有和公共数据集的测试集上分别达到了87%和84%的Top - 1准确率,与基线模型相比,准确率提高了超过10%。在对实际样本进行实时系统测试时,使用我们的移动应用,准确率略有下降,分别为78.5%(Top - 1)和82.6%(Top - 5),这可能与训练数据和测试条件的变异性有关。该研究的一个独特之处在于借助移动应用提供众包反馈以及婆罗洲地区物种的地理映射。尽管如此,所提出的系统为实时植物物种识别系统展示了一个有前景的方向。