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Color Space Analysis Using KNN for Lettuce Crop Stages Identification in Smart Farm Setup

机译:使用KNN用于莴苣作物阶段识别智能农场设置的颜色空间分析

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Advancing technologies are being done in improvement and enhancement of the smart farming all over the world. The growth of the plants is being monitored through the vision system and image processing is done to identify their growth stages. This is important since the amount of light, temperature and water varies at each stage. One of the challenges in the image processing is the selection of the color space that will be appropriate for a particular setup. In this study, K-nearest neighboring is used in the image segmentation for the RGB, HSV, CIELab, and YCbCr color spaces. The specificity and sensitivity of each color spaces were computed and compared. Based on the result obtained, CIELab color space is the best color space to be used in the identification of the growth stage of the lettuce.
机译:正在进行推进技术的改进和改进世界各地的智能养殖。通过视觉系统监测植物的生长,并进行图像处理以识别其生长阶段。这是重要的,因为光的量,温度和水量在每个阶段都变化。图像处理中的一个挑战是选择适合特定设置的颜色空间。在本研究中,K-Cirfor邻位用于RGB,HSV,CIELAB和YCBCR颜色空间的图像分割中。计算每个颜色空间的特异性和灵敏度并进行比较。基于所得的结果,Cielab颜色空间是在鉴定生菜的生长阶段的最佳色彩空间。

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