Learning Objectness from Sonar Images for Class-Independent Object Detection

Matias Valdenegro-Toro
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引用次数: 6

Abstract

Detecting novel objects without class information is not trivial, as it is difficult to generalize from a small training set. This is an interesting problem for underwater robotics, as modeling marine objects is inherently more difficult in sonar images, and training data might not be available apriori. Detection proposals algorithms can be used for this purpose but usually requires a large amount of output bounding boxes. In this paper we propose the use of a fully convolutional neural network that regresses an objectness value directly from a Forward-Looking sonar image. By ranking objectness, we can produce high recall (96 %) with only 100 proposals per image. In comparison, EdgeBoxes requires 5000 proposals to achieve a slightly better recall of 97 %, while Selective Search requires 2000 proposals to achieve 95 % recall. We also show that our method outperforms a template matching baseline by a considerable margin, and is able to generalize to completely new objects. We expect that this kind of technique can be used in the field to find lost objects under the sea.
从声纳图像中学习目标进行类无关目标检测
检测没有类信息的新对象并不简单,因为很难从一个小的训练集进行推广。对于水下机器人来说,这是一个有趣的问题,因为在声纳图像中建模海洋物体本身就比较困难,而且训练数据可能无法先验地获得。检测建议算法可以用于此目的,但通常需要大量的输出边界框。在本文中,我们提出使用全卷积神经网络直接从前视声纳图像中回归物体值。通过对物体进行排序,我们可以在每张图像只有100个建议的情况下产生高召回率(96%)。相比之下,EdgeBoxes需要5000个提案才能达到97%的召回率,而选择性搜索需要2000个提案才能达到95%的召回率。我们还表明,我们的方法在相当大的范围内优于模板匹配基线,并且能够推广到全新的对象。我们期望这种技术可以用于现场寻找海底失物。
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