Small Object Detection for Birds with Swin Transformer

Da Huo, Marc A. Kastner, Tingwei Liu, Yasutomo Kawanishi, Takatsugu Hirayama, Takahiro Komamizu, I. Ide
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Abstract

Object detection is the task of detecting objects in an image. In this task, the detection of small objects is particularly difficult. Other than the small size, it is also accompanied by difficulties due to blur, occlusion, and so on. Current small object detection methods are tailored to small and dense situations, such as pedestrians in a crowd or far objects in remote sensing scenarios. However, when the target object is small and sparse, there is a lack of objects available for training, making it more difficult to learn effective features. In this paper, we propose a specialized method for detecting a specific category of small objects; birds. Particularly, we improve the features learned by the neck; the sub-network between the backbone and the prediction head, to learn more effective features with a hierarchical design. We employ Swin Transformer to upsample the image features. Moreover, we change the shifted window size for adapting to small objects. Experiments show that the proposed Swin Transformer-based neck combined with CenterNet can lead to good performance by changing the window sizes. We further find that smaller window sizes (default 2) benefit mAPs for small object detection.
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基于Swin变压器的鸟类小目标检测
目标检测是检测图像中的目标的任务。在这项任务中,小物体的检测尤为困难。除了尺寸小之外,还伴随着模糊、遮挡等问题带来的困难。目前的小目标检测方法主要针对小而密集的场景,如人群中的行人或遥感场景中的远处物体。然而,当目标对象很小且稀疏时,缺乏可用于训练的对象,使得学习有效特征变得更加困难。在本文中,我们提出了一种专门的方法来检测特定类别的小物体;鸟类。特别是,我们改进了颈部学习到的特征;在主干网和预测头之间的子网络中,采用分层设计来学习更有效的特征。我们使用Swin Transformer对图像特征进行上采样。此外,我们改变了偏移窗口的大小,以适应较小的对象。实验表明,基于Swin变压器的颈部与CenterNet相结合,通过改变窗口大小可以获得良好的性能。我们进一步发现较小的窗口大小(默认为2)有利于map进行小目标检测。
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