Abstract

Inshore ship detection from very high resolution (VHR) optical remote sensing images has been playing a critical role in various civil and military applications. However, it brings up an important challenge, which is difficult to complete effective and robust feature extraction when valid inshore ship training sample acquired is limited, and the severe imbalance problem exists of positive and negative samples. In order to tackle the abovementioned difficulties, the structured sparse representation model (SSRM) is proposed to achieve inshore ship detection in more effectively and robustly way by circumstances of the small sample set. Here, SSRM has two steps that include inshore ship region proposal (RP) and orientation prediction (OP). Related to the RP process, the error matrix embedded in SSRM not only prevents to build the high-dimension background subdictionary and imbalance problem of positive and negative samples, but also achieves an effective intraclass robustness description of inshore ships and background. For the OP stage, the low-rank constraint of common sharing atoms in SSRM can make inshore ship direction be extracted by their sparse coding. In addition, based on RP and OP guidance, the proposed comprehensive structure voting can achieve an accurate contour detection of inshore ships. Finally, several experimental results employ that Google Earth service, HRSC 2016, and DOTA datasets proved the effectiveness of the proposed method. The results show that proposed inshore ship detection method can provide approximately 83.7% Recall and 72.3% Precision by using only over 100 positive training samples, which outperforms the state of the art methods.

Highlights

  • W ITH the development of very high resolution (VHR) remote sensing technology, it has been widely used for the ship salvage, port traffic trade control, and ship oil spill monitoring applications [1]–[5]

  • The proposed sparse representation model (SSRM) combined with the comprehensive structure voting (CSV) method can achieve the small sample set learning for inshore ship detection, and have better performance than state-of-the-art methods

  • We presented a novel inshore ship detection method for VHR optical remote sensing images by using the proposed SSRM combined with the CSV method

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Summary

Introduction

W ITH the development of very high resolution (VHR) remote sensing technology, it has been widely used for the ship salvage, port traffic trade control, and ship oil spill monitoring applications [1]–[5]. Some unpredicted interferences (i.e., jetties, convex banks, rectangular roofs, etc.) from complex background contain more categories, and they all have a great probability to be false alarms Considering these issues, various automatic inshore ship detection methods have been proposed [6]–[30], and these methods can roughly divided into three categories: manually designed feature (MDF)-based methods [6]–[12], parameter space transformation (PST)-based methods [13]–[17], and automatically feature learning based methods [18]–[30]

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