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Automated Detection of Hummingbirds in Images: A Deep Learning Approach

机译:图像中蜂鸟的自动检测:一种深度学习方法

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The analysis of natural images has been the topic of research in uncountable articles in computer vision and pattern recognition (e.g., natural images has been used as benchmarks for object recognition and image retrieval). However, despite the research progress in such field, there is a gap in the analysis of certain type of natural images, for instance, those in the context of animal behavior. In fact, biologists perform the analysis of natural images manually without the aid of techniques that were supposedly developed for this purpose. In this context, this paper presents a study on automated methods for the analysis of natural images of hummingbirds with the goal to assist biologists in the study of animal behavior. The automated analysis of hummingbird behavior is challenging mainly because of (1) the speed at which these birds move and interact; (2) the unpredictability of their trajectories; and (3) its camouflage skills. We report a comparative study of two deep learning approaches for the detection of hummingbirds in their nest. Two variants of transfer learning from convolutional neural networks (CNNs) are evaluated in real imagery for hummingbird behavior analysis. Transfer learning is adopted because not enough images are available for training a CNN from scratch, besides, transfer learning is less time consuming. Experimental results are encouraging, as acceptable classification performance is achieved with CNN-based features. Interestingly, a pretrained CNN without fine tunning and a standard classifier performed better in the considered data set.
机译:在计算机视觉和模式识别中,自然图像的分析一直是无数文章的研究主题(例如,自然图像已被用作对象识别和图像检索的基准)。然而,尽管在该领域中研究取得了进展,但是在分析某些类型的自然图像(例如在动物行为方面的自然图像)时仍存在差距。实际上,生物学家无需借助专门为此目的开发的技术即可手动执行自然图像的分析。在这种情况下,本文提出了一种用于分析蜂鸟自然图像的自动化方法的研究,目的是协助生物学家研究动物行为。蜂鸟行为的自动分析具有挑战性,这主要是因为(1)这些鸟移动和互动的速度; (2)其轨迹的不可预测性; (3)伪装技巧。我们报告了两种用于检测蜂鸟巢中深度学习方法的比较研究。从卷积神经网络(CNN)进行迁移学习的两个变体在实像中进行了评估,用于蜂鸟的行为分析。之所以采用转移学习,是因为没有足够的图像可用于从头训练CNN,此外,转移学习耗时较少。实验结果令人鼓舞,因为使用基于CNN的功能可以实现可接受的分类性能。有趣的是,没有经过精调的预训练CNN和标准分类器在考虑的数据集中表现更好。

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