Viral diseases are major sources of poor yields for cassava, the 2nd largest provider of carbohydrates in Africa.At least 80% of small-holder farmer households in Sub-Saharan Africa grow cassava. Since many of these farmers have smart phones, they can easily obtain photos of dis-eased and healthy cassava leaves in their farms, allowing the opportunity to use computer vision techniques to monitor the disease type and severity and increase yields. How-ever, annotating these images is extremely difficult as ex-perts who are able to distinguish between highly similar dis-eases need to be employed. We provide a dataset of labeled and unlabeled cassava leaves and formulate a Kaggle challenge to encourage participants to improve the performance of their algorithms using semi-supervised approaches. This paper describes our dataset and challenge which is part of the Fine-Grained Visual Categorization workshop at CVPR2019.
翻译:非洲第二大碳水化合物供应国木薯产量低的主要原因是病毒性疾病。 撒哈拉以南非洲至少80%的小农户农民家庭种植木薯。由于许多农民拥有智能手机,他们可以很容易地在农场里获得病态和健康的木薯叶的照片,从而有机会利用计算机视觉技术监测疾病类型和严重程度并增加产量。这些图像的标记极其困难,因为需要使用能够区分极为相似的病症的前潜伏者。我们提供了贴有标签和未贴标签的木薯叶的数据集,并提出了卡格格勒挑战,鼓励参与者使用半监督方法改进算法的性能。本文描述了我们的数据组和挑战,这是CVPR2019年精美的视觉卡特格化讲习班的一部分。