Abstract

As marine transportation has increased in coastal regions, maritime accidents associated with vessels have steadily increased. Remotely sensed satellite or airborne images can aid rapid vessel monitoring over wide areas at high resolutions. In this study, airborne hyperspectral experiments were performed to detect marine vessels mainly including fishing boat and yacht by applying pixel-based mixture techniques and to estimate the size of the vessels through an objective ellipse fitting method. Various spectral libraries of marine objects and seawaters were constructed through in-situ experiments for spectral analysis of the internal structures of vessels. The hyperspectral images were dimensionally reduced through principal component analysis. Several hyperspectral mixture algorithms, such as N-FINDR, pixel purity index (PPI), independent component analysis (ICA), and vertex component analysis (VCA), were used for the detection of vessels. The N-FINDR and VCA techniques presented a total of 14 vessels, the ICA technique detected seven vessels, and the PPI technique detected two vessels. The pixel-based probability of detection (POD) and false alarm ratio (FAR) for all 14 vessels were 96.40% and 4.30%, respectively. The sizes of the vessels were estimated by extracting the boundaries of the vessels through a two-dimensional gradient and applying the ellipse fitting method. Compared with the digital mapping camera (DMC) images with resolutions of 0.10 m, the root-mean-square errors of the length and width of the vessels were approximately 1.19 m and 0.81 m, respectively. The application of spectral mixing methods provided a high probability of detecting the objects, as well as the overall structures of the decks of the vessels.

Highlights

  • Coastal regions are characterized by complex coastal sea waters, with waves, tides, tidal flats, and diverse geographical features such as sand shores, bays, and deltas

  • The digital mapping camera (DMC) image presents the exact position of the vessels and a total of 10 fiber-reinforced plastic (FRP) vessels with blue decks (S1, S3−S9, S11, and S12) (Figure 6b)

  • This study showed a high capability of detecting the existence of vessels with high probability of detection (POD) values, and retrieving the sizes of the vessels with comparatively good accuracy

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Summary

Introduction

Coastal regions are characterized by complex coastal sea waters, with waves, tides, tidal flats, and diverse geographical features such as sand shores, bays, and deltas. These regions provide important ecological, chemical, and geologically unique environments, making them suitable for human habitation and production activities. It is necessary to monitor vessels in real time to prepare for marine accidents and to effectively manage coastal regions. Most accidents occur under poor weather conditions when winds are strong or waves are high. Such conditions have prevented the rapid detection of vessels. High resolution remote sensing methods using satellites or aircraft can contribute to efficient monitoring over a wide area [4]

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