论文标题
优化SAR图像中的船舶检测效率
Optimizing ship detection efficiency in SAR images
论文作者
论文摘要
非法捕鱼的检测和预防对于维持健康且功能性的生态系统至关重要。卫星图像中有关船舶检测的最新研究仅集中在绩效改进上,无视检测效率。但是,船舶检测的速度和计算成本对于及时干预以防止非法捕鱼至关重要。因此,我们研究了优化方法,这些方法降低了检测时间和成本,而绩效损失最少。我们使用卫星图像数据集训练了基于卷积神经网络(CNN)的对象检测模型。然后,我们设计了两个可以应用于基本CNN或任何其他基本模型的效率优化。优化由快速,廉价的分类模型和统计算法组成。优化与对象检测模型的集成导致速度和性能之间的权衡。我们使用指标研究了权衡,这些指标使执行时间和性能不同。我们表明,通过使用分类模型,检测模型的平均精度可以在44%的时间内约为99.5%,或者在25%的时间内约为92.7%。
The detection and prevention of illegal fishing is critical to maintaining a healthy and functional ecosystem. Recent research on ship detection in satellite imagery has focused exclusively on performance improvements, disregarding detection efficiency. However, the speed and compute cost of vessel detection are essential for a timely intervention to prevent illegal fishing. Therefore, we investigated optimization methods that lower detection time and cost with minimal performance loss. We trained an object detection model based on a convolutional neural network (CNN) using a dataset of satellite images. Then, we designed two efficiency optimizations that can be applied to the base CNN or any other base model. The optimizations consist of a fast, cheap classification model and a statistical algorithm. The integration of the optimizations with the object detection model leads to a trade-off between speed and performance. We studied the trade-off using metrics that give different weight to execution time and performance. We show that by using a classification model the average precision of the detection model can be approximated to 99.5% in 44% of the time or to 92.7% in 25% of the time.