Abstract

Partially occluded object detection (POOD) has been an important task for both civil and military applications that use high-resolution remote sensing images (HR-RSIs). This topic is very challenging due to the limited object evidence for detection. Recent partial configuration model (PCM) based methods deal with occlusion yet suffer from the problems of massive manual annotation, separate parameter learning, and low training and detection efficiency. To tackle this, a unified PCM framework (UniPCM) is proposed in this paper. The proposed UniPCM adopts a part sharing mechanism which directly shares the root and part filters of a deformable part-based model (DPM) among different partial configurations. It largely reduces the convolution overhead during both training and detection. In UniPCM, a novel DPM deformation deviation method is proposed for spatial interrelationship estimation of PCM, and a unified weights learning method is presented to simultaneously obtain the weights of elements within each partial configuration and the weights between partial configurations. Experiments on three HR-RSI datasets show that the proposed UniPCM method achieves a much higher training and detection efficiency for POOD compared with state-of-the-art PCM-based methods, while maintaining a comparable detection accuracy. UniPCM obtains a training speedup of maximal 10× and 2.5× for airplane and ship, and a detection speedup of maximal 7.2×, 4.1× and 2.5× on three test sets, respectively.

Highlights

  • Object detection has been a key factor in high-resolution remote sensing images (HR-RSIs) analysis, and has been extensively studied for the remote sensing community

  • This paper exactly concentrates on partially occluded object detection (POOD) in HR-RSIs with high accuracy

  • The contributions of the work can be found in four aspects: (1) we analyze the shortcomings of partial configuration model (PCM) and AFI-PCM in detail, and give the inherent causes that lead to these shortcomings; (2) we propose to use a part sharing mechanism for fast POOD, which will get around the PCM assembly process

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Summary

Introduction

Object detection has been a key factor in high-resolution remote sensing images (HR-RSIs) analysis, and has been extensively studied for the remote sensing community. Due to recent advancement in remote sensing technology, the detection of small moveable manmade objects becomes possible, and the focus of object detection in remote sensing has been gradually moved to relatively small targets, such as vehicles, airplanes, and ships, from large man-made infrastructures such as airports and residual areas. This shift leads to a situation in which, on the one hand, the induced information in HR-RSIs can affect the detection accuracy by the background, and on the other hand makes it hard to find frequently partially occluded objects with missing information. Its black-box architecture makes it relatively hard to accommodate heavy occlusion [13] which is very common in HR-RSIs

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