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Denoising auto-encoder based image enhancement for high resolution sonar image

机译:基于自动编码器的高分辨率声纳图像的自动编码器的图像增强

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A typical sonar image has a plenty of random noise compared to an optical image. Due to poor picture quality, there is a large restriction on recognizing any object. Pattern recognition is exceedingly difficult not only in computer image processing but even in human eyes. Numerous researchers have attempted to apply various types of average filters to sonar images, and have also removed noise by using multiple images in succession. However, each of the algorithms has a limitation in that the resolution of the image itself is degraded or the image of the object is difficult to remove noise. Finally, We performed sonar image noise reduction with the auto-encoder algorithm based on convolutional neural network, which as recently been attracting attention. With the algorithm, we obtained sonar images of superior quality with only a single continuous image. We simply learned a ton of sonar images in a neural network of auto-encoder structures, and then we could get the results by injecting the original sonar images. We verified the results of image enhancement using the acoustic lens based multibeam sonar images.
机译:与光学图像相比,典型的声纳图像具有大量随机噪声。由于图像质量差,对识别任何物体存在很大的限制。模式识别不仅在计算机图像处理中非常困难,但即使在人眼中。许多研究人员试图将各种类型的平均滤波器应用于声纳图像,并且连续使用多个图像也已经消除了噪声。然而,每个算法具有限制,因为图像本身的分辨率劣化,或者对象的图像难以去除噪声。最后,我们使用基于卷积神经网络的自动编码器算法进行了声纳图像降噪,这是最近引起的注意。利用算法,我们只获得了单一连续图像的优质质量的声纳图像。我们只是在自动编码器结构的神经网络中学到了一大吨声纳图像,然后我们可以通过注入原始声纳图像来获得结果。我们使用基于声透镜的多沟声纳图像验证了图像增强的结果。

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