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Cow tail detection method for body condition score using Faster R-CNN

机译:使用Faster R-CNN的牛尾巴身体状况评分检测方法

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Body condition score (BCS) is an important parameter to measure cow energy reserve for feeding management. Currently, measuring BCS mainly relies on veterinary experts or skilled scorers by observing and touching animals, which is time consuming and costly, especially on large-scale farms. In this study, a method of image processing and deep learning is employed to estimate cow BCS. Firstly, the network cameras were used to capture the back view images of the cows, resulting in 5470 images that constituted the sample data set, in which the key body parts (tail, pins and rump) of the cow were labeled manually. Secondly, Faster Region-Convolutional Neural Networks (Faster R-CNN) method was used to position and classify the cow tail images which were correlated to the value of BCS. Compared with other deep learning algorithms like the Single Shot multibox Detector (SSD), Faster R-CNN had a slightly higher accuracy. Specifically, the detection accuracy for cow tails was 84%, and the BCS classification had an average accuracy 70%. The low BCS classification rate was mainly due to the insufficient image data in this study for cows with certain ranges of BCS.
机译:身体状况评分(BCS)是衡量奶牛饲喂管理能量储备的重要参数。当前,测量BCS主要依靠兽医专家或熟练的计分员,通过观察和接触动物来进行,这既费时又费钱,特别是在大型农场。在这项研究中,采用了一种图像处理和深度学习的方法来估算牛的BCS。首先,使用网络摄像机捕获奶牛的后视图图像,得到5470张图像,这些图像构成了样本数据集,其中手动标记了奶牛的关键身体部位(尾巴,大头钉和臀部)。其次,使用快速区域卷积神经网络(Faster R-CNN)方法对与BCS值相关的牛尾图像进行定位和分类。与诸如Single Shot Multibox Detector(SSD)之类的其他深度学习算法相比,Faster R-CNN具有更高的准确性。具体而言,牛尾巴的检测准确度为84%,而BCS分类的平均准确度为70%。 BCS分类率低的主要原因是本研究中具有一定范围BCS的奶牛的图像数据不足。

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