基于尺度匹配R3Det的船舶检测方法

Xiaofei Qu, En Long, Shouye Lv, Pengfei Chen, Guangling Lai, Yuke Yang, Jisheng Du
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引用次数: 1

摘要

基于深度学习的目标检测神经网络由于具有较高的检测率和较低的虚警率,在船舶检测中得到了广泛的应用。然而,复杂背景下的真实场景检测仍然是海洋动态船舶检测中的一个挑战,其性能受到训练数据集规模的限制,其中训练高性能的模型通常需要大量的多尺度数据集。然而,在这种情况下很难获得大规模的数据集。此外,R3Det解决了被检测物体的纵横比大、被检测物体排列密集、被检测物体的类别不对称等问题。然而,R3Det采用最近邻插值对图像进行上采样,导致图像有一定概率出现块效应,影响目标检测。为了解决这些问题,我们提出了一种基于尺度匹配的旋转物体特征细化的精细单级探测器模型。提出了新的规模匹配预训练策略和改进的特征金字塔网络(IFPN)。该方法不仅扩大了训练数据样本集,而且提高了训练图像的清晰度,提高了船舶检测率,降低了虚警率。在DOTAv1.5和高分辨率数据集上进行的实验表明,该方法的船舶检测率和虚警率均优于基线方法。
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Ship Detection Method based on Scale Matched R3Det
Given their high detection rates and low false alarm rates, object detection neural networks based on deep learning have been widely used in ship detection. However, the detection in real-world scenario with complex back ground remains a challenge in marine dynamic ship detection, whose performance is limited by the scale of training datasets, where training a model with high-performance usually requires a large number of multi-scale datasets. However, it is difficult to obtain a large-scale dataset in such cases. In addition, R3Det solves the problem that the vertical and horizontal ratio of the object to be detected is large, the objects to be detected are densely arranged, and category asymmetry of objects to be detected have been widely concerned. However, R3Det uses the nearest neighbor interpolation to up-sampling the image, which leads to a blocky effect of the image with a certain probability, which affects the object detection. In order to alleviate these problems, we propose a new model called “Refined Single-Stage Detector with Feature Refinement for Rotating Object based on Scale-match”. The new pre-training strategy of scale match and improved feature pyramid network (IFPN) were introduced. The method not only expands the training data sample set, but also improves the clarity of training pictures, and improves the ship detection rate and reduce the false alarm rate. Experiments with DOTAv1.5 and high-resolution datasets showed that the ship detection rate and false alarm rate are better than baseline methods.
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