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Data Augmentation for Deep Learning based Cattle Segmentation in Precision Livestock Farming

机译:基于深度学习的精确畜牧业牛分割的数据增强

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Accurate segmentation of cattle is a prerequisite for feature extraction and estimation. Convolutional neural networks (CNN) based approaches that train models on the largescale labeled datasets have achieved high levels of segmentation performance. However, pixel-wise manual labeling of a cattle image is challenging and time consuming due to the irregularity of the cattle contour. In this regard, data augmentation for deep learning based cattle segmentation is required. Our proposed data augmentation approach uses random image cropping and patching to expand the number of training images and their corresponding labels, then, a state-of-the-art deep neural net is trained to segment cattle images. Here we apply these techniques to images of cattle in a feedlot environment. Our data augmentation-based approach segmented cattle from a complex background with 99.5% mean Accuracy (mAcc) and 97.3% mean Intersection of Unions (mIoU), improving current techniques including a combination of random flipping, rotation and color jitter.
机译:准确分割牛群是特征提取和估计的先决条件。在大型标签数据集上训练模型的基于卷积神经网络(CNN)的方法已经实现了高水平的分割性能。然而,由于牛轮廓的不规则性,对牛图像进行逐像素的手动标记是具有挑战性和耗时的。在这方面,需要对基于深度学习的牛分割进行数据增强。我们提出的数据增强方法使用随机图像裁剪和修补来扩展训练图像及其相应标签的数量,然后训练出最先进的深度神经网络来分割牛图像。在这里,我们将这些技术应用于饲养场环境中的牛的图像。我们基于数据增强的方法将牛从复杂的背景中分离出来,平均准确度(mAcc)为99.5%,平均工会交叉度(mIoU)为97.3%,改进了当前的技术,包括随机翻转,旋转和颜色抖动的组合。

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