基于定向梯度直方图和Canny边缘检测器的水下水雷探测

S. Manonmani, L. Akshita, L. AnnetteShajan, L. AneeshSidharth, S. Rangaswamy
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引用次数: 2

摘要

对于海军防务部队来说,水雷对其生命财产安全构成严重威胁。在这一领域进行的研究使用了侧扫声纳图像,没有获得足够的精度来探测水下水雷,因此可能导致假警报。本文采用了定向梯度直方图和基于边缘的特征提取方法。选择这些方法是因为它们在使用不同数据集的其他研究中显示出非常高的准确性。数据经过预处理——调整大小并转换为灰度图像——然后应用特征提取方法。为了对图像是否含有地雷进行分类,使用了模板匹配和特征向量分类方法。结果表明,该方法具有较高的地雷探测精度。同样的研究可以扩展到其他目标检测方法。这里采用的方法可以帮助海军防御更准确地探测,从而最大限度地减少与水雷接触时可能造成的损害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Underwater Mine Detection Using Histogram of oriented gradients and Canny Edge Detector
For the naval defense forces, underwater mines pose a serious threat to safety and security to their lives and property. Studies conducted in this field which used side scan sonar imagery have not yielded sufficient accuracy for the detection of underwater mines and hence can lead to false alarms. In this paper feature extraction methods-Histogram of oriented gradients and edge-based feature extraction are used. These methods were chosen as they have shown very high accuracy in other studies which used different datasets. The data undergoes preprocessing-resizing and converting to grayscale images-after which the feature extraction method is applied. To classify whether the image contains a mine or not, template matching and classification methods feature vectors are used. It was found that this method yields high accuracy for the detection of mines. This same study can be extended for other object detection methods. The method followed here can help the naval defense in more accurate detection hence minimizing the damage which can be incurred in case of contact with a mine.
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