Size-invariant Detection of Marine Vessels From Visual Time Series

T. Marques, A. Albu, P. O'Hara, Norma Serra, Ben Morrow, L. McWhinnie, R. Canessa
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引用次数: 5

Abstract

Marine vessel traffic is one of the main sources of negative anthropogenic impact upon marine environments. The automatic identification of boats in monitoring images facilitates conservation, research and patrolling efforts. However, the diverse sizes of vessels, the highly dynamic water surface and weather-related visibility issues significantly hinder this task. While recent deep learning (DL)-based object detectors identify well medium- and large-sized boats, smaller vessels, often responsible for substantial disturbance to sensitive marine life, are typically not detected. We propose a detection approach that combines state-of-the-art object detectors and a novel Detector of Small Marine Vessels (DSMV) to identify boats of any size. The DSMV uses a short time series of images and a novel bi-directional Gaussian Mixture technique to determine motion in combination with context-based filtering and a DL-based image classifier. Experimental results obtained on our novel datasets of images containing boats of various sizes show that the proposed approach comfortably outperforms five popular state-of-the-art object detectors. Code and datasets available at https://github.com/tunai/hybrid-boat-detection.
基于视觉时间序列的船舶尺寸不变性检测
海洋船舶交通是人为对海洋环境造成负面影响的主要来源之一。在监测图像中自动识别船只,有助于保育、研究和巡逻工作。然而,船舶的不同尺寸、高度动态的水面和与天气相关的能见度问题严重阻碍了这项任务。虽然最近基于深度学习(DL)的目标检测器可以很好地识别大中型船只,但通常对敏感的海洋生物造成重大干扰的小型船只通常无法检测到。我们提出了一种检测方法,结合了最先进的物体探测器和一种新型的小型船舶探测器(DSMV)来识别任何大小的船只。DSMV使用短时间序列图像和一种新的双向高斯混合技术,结合基于上下文的滤波和基于dl的图像分类器来确定运动。在包含各种大小船只的新图像数据集上获得的实验结果表明,所提出的方法远远优于五种流行的最先进的目标探测器。代码和数据集可在https://github.com/tunai/hybrid-boat-detection。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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