Image-based yield detection in agriculture could raiseharvest efficiency and cultivation performance of farms. Following this goal, this research focuses on improving instance segmentation of field crops under varying environmental conditions. Five data sets of cabbage plants were recorded under varying lighting outdoor conditions. The images were acquired using a commercial mono camera. Additionally, depth information was generated out of the image stream with Structure-from-Motion (SfM). A Mask R-CNN was used to detect and segment the cabbage heads. The influence of depth information and different colour space representations were analysed. The results showed that depth combined with colour information leads to a segmentation accuracy increase of 7.1%. By describing colour information by colour spaces using light and saturation information combined with depth information, additional segmentation improvements of 16.5% could be reached. The CIELAB colour space combined with a depth information layer showed the best results achieving a mean average precision of 75.
翻译:在农业中,基于图像的产量检测可提高收获效率和农场的种植绩效。在实现这一目标之后,这项研究侧重于改善不同环境条件下田地作物的例分化。在不同的户外照明条件下记录了五套卷心植物数据组。这些图像是使用商业单一照相机获得的。此外,通过结构-运动(SfM)从图像流中生成了深度信息。使用面具R-CNN探测和分割卷心菜头。分析了深度信息和不同颜色空间代表的影响。结果显示,深度与颜色信息相结合,导致分化精确度提高7.1%。通过使用光和饱和信息以及深度信息来描述彩色空间的颜色信息,可以达到16.5%的额外分化改进。CIELAB彩色空间与深度信息层相结合,显示了达到平均精确度75的最好结果。