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Automatic Differentiation of Damaged and Unharmed Grapes Using RGB Images and Convolutional Neural Networks

机译:使用RGB图像和卷积神经网络自动分化损坏和无助的葡萄

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Knowledge about the damage of grapevine berries in the vineyard is important for breeders and farmers. Damage to berries can be caused for example by mechanical machines during vineyard management, various diseases, parasites or abiotic stress like sun damage. The manual detection of damaged berries in the field is a subjective and labour-intensive task, and automatic detection by machine learning methods is challenging if all variants of damage should be modelled. Our proposed method detects regions of damaged berries in images in an efficient and objective manner using a shallow neural network, where the severeness of the damage is visualized with a heatmap. We compare the results of the shallow, fully trained network structure with an ImageNet-pretrained deep network and show that a simple network is sufficient to tackle our challenge. Our approach works on different grape varieties with different berry colours and is able to detect several cases of damaged berries like cracked berry skin, dried regions or colour variations.
机译:关于葡萄园葡萄园损伤的知识对于育种者和农民来说很重要。例如,在葡萄园管理期间,可以通过机械机,各种疾病,寄生虫或非生物胁迫导致浆果损坏,如阳光损伤。本领域损坏浆果的手动检测是主观和劳动密集型任务,如果所有损坏的变体都应该建模,机器学习方法的自动检测是具有挑战性的。我们所提出的方法使用浅神经网络以有效和客观的方式检测图像中损坏的浆果区域,其中损坏的严重性被热图可视化。我们将浅层完全训练的网络结构的结果与想象成预定的深网络进行比较,并表明简单的网络足以解决我们的挑战。我们的方法在不同的浆果颜色的不同葡萄品种上有效,能够检测几个损坏浆果,如破裂的浆果皮肤,干燥的区域或颜色变化。

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