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Objectness Scoring and Detection Proposals in Forward-Looking Sonar Images with Convolutional Neural Networks

机译:卷积神经网络在前视声纳图像中的客观评分和检测建议

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Forward-looking sonar can capture high resolution images of underwater scenes, but their interpretation is complex. Generic object detection in such images has not been solved, specially in cases of small and unknown objects. In comparison, detection proposal algorithms have produced top performing object detectors in real-world color images. In this work we develop a Convolutional Neural Network that can reliably score objectness of image windows in forward-looking sonar images and by thresholding objectness, we generate detection proposals. In our dataset of marine garbage objects, we obtain 94% recall, generating around 60 proposals per image. The biggest strength of our method is that it can generalize to previously unseen objects. We show this by detecting chain links, walls and a wrench without previous training in such objects. We strongly believe our method can be used for class-independent object detection, with many real-world applications such as chain following and mine detection.
机译:前视声纳可以捕获水下场景的高分辨率图像,但是它们的解释很复杂。这类图像中的一般物体检测尚未解决,特别是在物体较小且未知的情况下。相比之下,检测建议算法已在现实世界的彩色图像中产生了性能最高的对象检测器。在这项工作中,我们开发了一个卷积神经网络,可以可靠地对前声纳图像中的图像窗口的客观性进行评分,并通过对客观性进行阈值化,我们生成检测建议。在我们的海洋垃圾对象数据集中,我们获得了94%的召回率,每幅图像产生约60个建议。我们方法的最大优势在于它可以推广到以前看不见的物体。我们通过检测链节,墙壁和扳手,而无需事先对此类物体进行训练来证明这一点。我们坚信,我们的方法可用于与类无关的对象检测,并具有许多实际应用,例如链跟踪和地雷检测。

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