4.7 Article

A Survey of the Four Pillars for Small Object Detection: Multiscale Representation, Contextual Information, Super-Resolution, and Region Proposal

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2020.3005231

关键词

Object detection; Feature extraction; Detectors; Image resolution; Machine learning; Roads; Task analysis; Contextual information; multiscale representation; region proposal; small object dataset; small object detection; super-resolution

资金

  1. National Natural Science Foundation of China [61906138]
  2. State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body Open Project [31815005]
  3. European Union [785907]
  4. Shanghai AI Innovation Development Program 2018

向作者/读者索取更多资源

This article presents the first-ever survey of recent studies in deep learning-based small object detection. It provides an overview of the basic elements of small object detection, state-of-the-art datasets, performance of different methods, and the latest small object detection networks. The article also discusses promising directions and tasks for future work in small object detection.
Although great progress has been made in generic object detection by advanced deep learning techniques, detecting small objects from images is still a difficult and challenging problem in the field of computer vision due to the limited size, less appearance, and geometry cues, and the lack of large-scale datasets of small targets. Improving the performance of small object detection has a wider significance in many real-world applications, such as self-driving cars, unmanned aerial vehicles, and robotics. In this article, the first-ever survey of recent studies in deep learning-based small object detection is presented. Our review begins with a brief introduction of the four pillars for small object detection, including multiscale representation, contextual information, super-resolution, and region-proposal. Then, the collection of state-of-the-art datasets for small object detection is listed. The performance of different methods on these datasets is reported later. Moreover, the state-of-the-art small object detection networks are investigated along with a special focus on the differences and modifications to improve the detection performance comparing to generic object detection architectures. Finally, several promising directions and tasks for future work in small object detection are provided. Researchers can track up-to-date studies on this webpage available at: https://github.com/tjtum-chenlab/SmallObjectDetectionList.

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