Technical Name | Development of fruit tree industry monitoring technology based on multi-source image recognition technology | ||
---|---|---|---|
Project Operator | Taiwan Agricultural Research Institute Council of Agriculture, Executive Yuan | ||
Project Host | 郭鴻裕, 陳淑佩, 林毓雯, 周呈霙, 王驥魁 | ||
Summary | Integrating deep learning, 3D information analysis, hyperspectral analysis, computer vision analysiscombined the multi-source images to develop fruit quality monitoring techniques, including: planting area monitoring, position monitoring, yield monitoring, harvesting time prediction, fruit maturity measurement, fruit quality testing, to achieve the goal of enhancing industrial value. |
||
Scientific Breakthrough | Identification system applied to fruit trees classification can reach mean average precision of 0.85. Airborne LiDAR can penetrate the screen-house to obtain the fruit trees information inside. Monitoring the production seasonrelease yield prediction monthly. Automatic fruit selection reduces human’s screening,we use hyperspectral technology to measure fruit maturity. |
||
Industrial Applicability | AgricultureFood Agency: Interpret fruit treescalculate area. BAPHIQ: Apply height data for Tessaratoma papillosa Drury. Agribusiness: Farm monitoring. Council of Agriculture: Keep yieldprice in balance by yield prediction. Industry: We cooperated with Farmer’s Associationtwo companies for automatic fruit selectionautomatic interpretation of fruit maturity. |
||
Keyword | Fruit Tree Identification Image Segmentation Machine Learning Convolutional Neural Network Airborne LiDAR Hyperspectral Analysis Yield Predict Quality Inspection Land Usage Agricultural Monitering |