论文标题
通过聊天机器人服务的稻田图像自动稻米疾病检测的系统
A System for Automatic Rice Disease Detection from Rice Paddy Images Serviced via a Chatbot
论文作者
论文摘要
在本文中开发并介绍了一个诊断实际稻田图像的水稻疾病的线机器人系统。这是易于使用和自动系统,旨在帮助水稻农民提高稻米的产量和质量。目标图像是从实际的稻田环境中拍摄的,没有特殊的样品制备。我们使用深度学习神经网络技术来检测图像中的水稻疾病。我们开发了一种对象检测模型培训和完善过程,以提高我们先前关于水稻休假疾病检测的研究的表现。该过程是基于分析模型的预测结果的基础,并且可以反复用于在模型的下一个培训中提高数据库的质量。我们的线路机器人系统的部署模型是根据我们以前的论文Yolov3中选定的最佳性能技术创建的,该技术由精制培训数据集训练。在5个目标类别上测量了部署模型的性能,发现平均真实正点从上一篇论文的91.1%提高到本研究的95.6%。因此,我们将这种部署模型用于水稻病线机器人系统。我们的系统会自动实时工作,以向包括水稻农民和水稻疾病专家在内的线组中的用户提出主要的诊断结果。他们可以通过聊天自由交流。在实际线路机器人部署中,该模型的性能是通过我们自己定义的测量平均真实正点来衡量的,并且被认为平均为78.86%。该系统很快,在我们的系统服务器中仅需2-3秒即可进行检测。
A LINE Bot System to diagnose rice diseases from actual paddy field images was developed and presented in this paper. It was easy-to-use and automatic system designed to help rice farmers improve the rice yield and quality. The targeted images were taken from the actual paddy environment without special sample preparation. We used a deep learning neural networks technique to detect rice diseases from the images. We developed an object detection model training and refinement process to improve the performance of our previous research on rice leave diseases detection. The process was based on analyzing the model's predictive results and could be repeatedly used to improve the quality of the database in the next training of the model. The deployment model for our LINE Bot system was created from the selected best performance technique in our previous paper, YOLOv3, trained by refined training data set. The performance of the deployment model was measured on 5 target classes and found that the Average True Positive Point improved from 91.1% in the previous paper to 95.6% in this study. Therefore, we used this deployment model for Rice Disease LINE Bot system. Our system worked automatically real-time to suggest primary diagnosis results to the users in the LINE group, which included rice farmers and rice disease specialists. They could communicate freely via chat. In the real LINE Bot deployment, the model's performance was measured by our own defined measurement Average True Positive Point and was found to be an average of 78.86%. The system was fast and took only 2-3 s for detection process in our system server.