Preliminary study on a framework for imaging sonar based underwater object recognition

Yeongjun Lee, Tae Gyun Kim, Hyun-Taek Choi
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引用次数: 10

Abstract

This paper presents a framework for underwater object recognition using imaging sonar. The framework consists of selection of candidates of interest, recognition, and tracking. Instead of trying to recognize objects from a whole image at any certain time using one-size-fit-all method, we're going to select candidates as possible objects of interest first and get rid of fake candidates using a probability based method similar to particle filter in series of images. Each candidate in small cut-out image is under processing by various and specific image processing techniques to recognize object, then it is transferred to tracking phase with object ID. We perform a simple test for an artificial landmark to show feasibility of the proposed framework.
基于成像声纳的水下目标识别框架初步研究
提出了一种基于成像声纳的水下目标识别框架。该框架包括感兴趣的候选对象的选择、识别和跟踪。我们不是尝试在任何特定时间使用一刀切的方法从整个图像中识别对象,而是首先选择候选对象作为可能感兴趣的对象,然后使用类似于一系列图像中的粒子滤波的基于概率的方法来去除假候选对象。小切割图像中的每个候选对象经过各种特定的图像处理技术进行目标识别,然后转入具有目标ID的跟踪阶段。我们对人造地标进行了简单的测试,以证明所提出框架的可行性。
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