首页> 外国专利> QUANTIFYING PLANT INFESTATION BY ESTIMATING THE NUMBER OF BIOLOGICAL OBJECTS ON LEAVES, BY CONVOLUTIONAL NEURAL NETWORKS THAT USE TRAINING IMAGES OBTAINED BY A SEMI-SUPERVISED APPROACH

QUANTIFYING PLANT INFESTATION BY ESTIMATING THE NUMBER OF BIOLOGICAL OBJECTS ON LEAVES, BY CONVOLUTIONAL NEURAL NETWORKS THAT USE TRAINING IMAGES OBTAINED BY A SEMI-SUPERVISED APPROACH

机译:通过估计叶片上的生物物体数量,通过使用半监督方法获得的训练图像的卷积神经网络来量化植物侵扰

摘要

A computer generates a training set with annotated images (473) to train a convolutional neural network (CNN). The computer receives leaf-images showing leaves and biological objects such as insects, in a first color-coding (413-A), changes the color-coding of the pixels to a second color-coding and thereby enhances the contrast (413-C), assigns pixels in the second color-coding to binary values (413-D), differentiates areas with contiguous pixels in the first binary value into non-insect areas and insect areas by an area size criterion (413-E), identifies pixel-coordinates of the insect areas with rectangular tile-areas (413-F), and annotates the leaf-images in the first color-coding by assigning the pixel-coordinates to corresponding tile-areas. The annotated image is then used to train the CNN for quantifying plant infestation by estimating the number of biological object such as insects on the leaves of plants.
机译:计算机生成带有注释图像(473)的训练,以训练卷积神经网络(CNN)。 计算机在第一颜色编码(413-a)中,计算机接收显示叶片和生物物体,例如昆虫,例如昆虫,将像素的颜色编码改变为第二颜色编码,从而增强对比度(413-c ),将第二颜色编码中的像素分配给二进制值(413-d),将第一个二进制值中的连续像素区分开在非昆虫区域和昆虫区域的区域大小标准(413-e),识别像素 - 具有矩形瓦片区域(413-F)的昆虫区域的控制,并通过将像素坐标分配给相应的瓦片区域来注释第一颜色编码中的叶片图像。 然后,通过估计植物叶片上的昆虫等生物物体的数量,将注释图像用于训练CNN以定量植物侵扰。

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