【24h】

Real-time Underwater Imaging System for Mineral Source Location and Concentration

机译:实时水下成像系统,用于矿物源定位和浓缩

获取原文
获取原文并翻译 | 示例

摘要

Remote robotic exploration holds vast potential for gaining knowledge about extreme environments accessible to humans only with great difficulty.In the last two decades,various underwater devices were developed for detecting the mines and mine-like objects in the deep-sea environment.However,there are some problems in recent equipment,such as poor accuracy of mineral objects detection,without real-time processing,and low resolution of underwater images.The underwater objects recognition is a difficult task,because the physical properties of the medium,the captured images are distorted seriously by scattering,absorption and noise effects.Scattering is caused by large suspended particles,such as in turbid water,which contains abundant particles,algae,and dissolved organic compounds.Colour change corresponds to the varying degrees of attenuation encountered by light traveling in the water with different wavelengths,rendering ambient underwater environments dominated by a bluish tone.Furthermore,in the imaging plane,there always contains noise that caused by algae or organic particulates.To solve all of these problems,in this paper,we are considering utilizing the image processing methods to determine the mineral location and to recognize the mineral actually within a little processing time.We firstly analysis the recent underwater imaging models,and propose a novel underwater optical imaging model,which is much closer to the light propagation model in the underwater environment.In our imaging system,we remove the electrical noise by dual-tree complex wavelet transform.Then,solving the non-uniform illumination of artificial lights by fast guided trilateral bilateral filter and recovering the image colour through automatic colour equalization.Finally,a shape-based mineral recognition algorithm is proposed for underwater objects detection.These methods are designed for real-time execution on limited-memory platforms,and are suitable for detecting underwater objects in practice.The Initial results are presented and experiments demonstrate the effectiveness of the proposed imaging system.
机译:远程机器人探测具有巨大的潜力,可以获取有关人类很难进入的极端环境的知识。在过去的二十年中,开发了各种水下设备来检测深海环境中的地雷和类雷物体。近年来存在一些问题,例如矿物物体检测的准确性差,没有实时处理以及水下图像的分辨率低。水下物体的识别是一项艰巨的任务,由于介质的物理特性,所捕获的图像散射是由较大的悬浮颗粒(例如在浑浊的水中,其中包含大量的颗粒,藻类和溶解的有机化合物)引起的,从而导致散射严重。颜色变化对应于光在水中传播时遇到的不同程度的衰减。具有不同波长的水,使周围的水下环境呈现蓝色调。因此,在成像平面中,总是包含由藻类或有机微粒引起的噪声。为解决所有这些问题,本文中,我们正在考虑利用图像处理方法来确定矿物位置并识别其中的实际矿物。我们首先分析了最近的水下成像模型,并提出了一种新颖的水下光学成像模型,该模型与水下环境中的光传播模型更加接近。在我们的成像系统中,我们通过双重消除噪声树复小波变换。然后,通过快速导引的三边双边滤波器解决人造光的不均匀照明,并通过自动色彩均衡恢复图像颜色。最后,提出了一种基于形状的矿物识别算法用于水下物体检测。这些方法专为在有限内存平台上实时执行而设计,适用于检测pra中的水下物体ctice。最初的结果被提出,实验证明了所提出的成像系统的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号