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Automatic Sheep Weight Estimation Based on K-Means Clustering and Multiple Linear Regression

机译:基于K-Means聚类和多元线性回归的自动绵羊重量估计

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Using a balance to estimate sheep's weight is inefficient and time consuming. Sheep's weight also fluctuates with many factors such as pregnancy, lactation, and gut fill, However, linear measurements are not highly affected by such type of factors, Therefore, in this paper, sheep weight was determined by calculating linear measurements from sheep images using visual analysis techniques. The system starts, followed by applying the K-means clustering for sheep segmentation. Then, biggest blob detection along with morphological analysis take place. After that breadth and width of sheep are extracted. Weight is then estimated from the linear dimensions using a regression function learned from the dataset. In the experiments, sheep weight estimation was tested on data set of 104 side images for 52 sheep. For performance evaluation, R-squared was measured and it reached 0.99. High accuracy of 98.75% was also achieved.
机译:使用平衡来估计绵羊的重量是效率低下且耗时的。 绵羊的重量也有许多因素,如怀孕,哺乳和肠道填充,然而,线性测量不受这种类型的因素的高度影响,因此,通过使用视觉从羊图像计算线性测量来确定绵羊重量 分析技术。 系统启动,然后应用于绵羊分段的K-means群集。 然后,最大的BLOB检测以及形态学分析发生。 在提取绵羊的宽度和宽度之后。 然后使用从数据集中学到的回归函数从线性尺寸估计重量。 在实验中,在104张侧图像的数据集上测试绵羊重量估计。 对于性能评估,测量R角,它达到0.99。 还达到了98.75%的高精度。

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