Tree fruit breeding is a long-term activity involving repeated measurements of various fruit quality traits on a large number of samples. These traits are traditionally measured by manually counting the fruits, weighing to indirectly measure the fruit size, and fruit colour is classified subjectively into different color categories using visual comparison to colour charts. These processes are slow, expensive and subject to evaluators' bias and fatigue. Recent advancements in deep learning can help automate this process. A method was developed to automatically count the number of sweet cherry fruits in a camera's field of view in real time using YOLOv3. A system capable of analyzing the image data for other traits such as size and color was also developed using Python. The YOLO model obtained close to 99% accuracy in object detection and counting of cherries and 90% on the Intersection over Union metric for object localization when extracting size and colour information. The model surpasses human performance and offers a significant improvement compared to manual counting.
翻译:树木果实育种是一项长期活动,涉及反复测量大量样品上各种水果质量特性。这些特性传统上是通过手工计算水果、间接测量水果大小、水果颜色通过视觉对比图进行主观分类。这些过程缓慢、昂贵,且受评估者的偏向和疲劳影响。最近深层次学习的进展有助于这一过程自动化。开发了一种方法,利用YOLOv3.一个能够分析诸如大小和颜色等其他特性的图像数据的系统,用Python开发了这个系统。YOLO模型在物体探测和计数方面获得了近99%的准确性,在取出大小和颜色信息时,在物体定位的交叉度指标方面获得了90%的准确性。该模型超过了人类的性能,并且比人工计数有了显著的改进。