Research on small object detection methods based on deep learning

Yandan Kong, Kai Liu, Zhihong Liang, Tianchen Liu, Yuxiang Huang, Mingming Qin
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引用次数: 1

Abstract

The efficiency and accuracy of object detection are steadily improving due to the development and widespread application of deep learning. However, small object detection remains a challenge. When employing mainstream object detection algorithms, small objects have low resolution, little feature information, and weak expressiveness, which leads to missed false detection and poor detection accuracy. This paper systematically describes on small object detection methods based on deep learning, divides them into four categories based on small object detection optimization methods, such as data augmentation, multi-scale feature fusion, contextual features, and optimized backbone networks, and analyzes the benefits and drawbacks of each method, and offers a forecast on future research directions.
基于深度学习的小目标检测方法研究
随着深度学习的发展和广泛应用,目标检测的效率和准确性不断提高。然而,小目标检测仍然是一个挑战。在采用主流目标检测算法时,小目标分辨率低、特征信息少、表达能力弱,容易漏检误检,检测精度不高。本文系统地介绍了基于深度学习的小目标检测方法,将基于小目标检测优化方法分为数据增强、多尺度特征融合、上下文特征和优化骨干网等四类,分析了每种方法的优缺点,并对未来的研究方向进行了预测。
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