The Instance Segmentation task, an extension of the well-known Object Detection task, is of great help in many areas, such as precision agriculture: being able to automatically identify plant organs and the possible diseases associated with them, allows to effectively scale and automate crop monitoring and its diseases control. To address the problem related to early disease detection and diagnosis on vines plants, a new dataset has been created with the goal of advancing the state-of-the-art of diseases recognition via instance segmentation approaches. This was achieved by gathering images of leaves and clusters of grapes affected by diseases in their natural context. The dataset contains photos of 10 object types which include leaves and grapes with and without symptoms of the eight more common grape diseases, with a total of 17,706 labeled instances in 1,092 images. Multiple statistical measures are proposed in order to offer a complete view on the characteristics of the dataset. Preliminary results for the object detection and instance segmentation tasks reached by the models Mask R-CNN and R^3-CNN are provided as baseline, demonstrating that the procedure is able to reach promising results about the objective of automatic diseases' symptoms recognition.
翻译:专案任务是众所周知的物体探测任务的延伸,它在许多领域很有帮助,例如精准农业:能够自动识别植物器官和可能与这些器官有关的疾病,从而能够有效地规模和自动化作物监测及其疾病控制;为了解决有关葡萄植物早期疾病检测和诊断的问题,建立了一个新的数据集,目的是通过分解方法促进疾病的最新识别,这是通过收集受自然情况下疾病影响的叶子和葡萄群的图像实现的;数据集包含10种对象类型的照片,其中包括有8种较常见葡萄疾病的叶子和葡萄和无症状的葡萄,总共1 092张图象中标注了17 706个病例;提议采取多种统计措施,以便提供关于数据集特征的完整观点;提供了模型Mask R-CNN和R%3-CN所实现的物体检测和实例分解任务的初步结果,作为基线,表明程序能够就自动疾病症状识别目标取得有希望的结果。