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Animal species classification using deep neural networks with noise labels

机译:动物物种使用噪声标签的深神经网络进行分类

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摘要

In this paper, we developed a robust learning method for animal classification from camera-trap images collected in highly cluttered natural scenes and annotated with noisy labels. We proposed two different network structures with and without clean samples to handle noisy labels. We use k-means clustering to divide the training samples into groups with different characteristics, which are then used to train different networks. These networks with enhanced diversity are then used to jointly predict or correct sample labels using max voting. We evaluate the performance of the proposed method on two public available camera-trap image datasets: Snapshot Serengeti and Panama-Netherlands datasets. Our experimental results demonstrate that our method outperforms the state-of-the-art methods from the literature and achieved improved accuracy on animal species classification from camera-trap images with high levels of label noise.
机译:在本文中,我们开发了一种稳健的学习方法,用于从高度杂乱的自然场景中收集的摄像机陷阱图像的动物分类和用嘈杂的标签注释。 我们提出了两种不同的网络结构,无需清洁样品以处理嘈杂的标签。 我们使用K-means聚类将训练样本划分为具有不同特征的组,然后用于培训不同的网络。 然后使用具有增强的多样性的网络共同预测或使用最大投票来预测或纠正样品标签。 我们评估了在两个公共可用摄像机陷阱图像数据集上提出的方法的性能:Snapshot Serengeti和巴拿马 - 荷兰数据集。 我们的实验结果表明,我们的方法优于文献中的最先进的方法,并实现了具有高水平标签噪声的摄像机陷阱图像对动物物种分类的提高准确性。

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