登录
首页 » matlab » 水下图像去雾与增强

水下图像去雾与增强

于 2020-11-02 发布
0 291
下载积分: 1 下载次数: 74

代码说明:

说明:  这篇论文提出了一种较好的水下图像增强的方法。首先使用经过端到端训练的卷积神经网络去测量输入图片,同时以自适应双边滤波器对传输图片进行处理。接着提出一种基于白平衡的策略来消除图片的颜色偏差,用拉普拉斯金字塔融合获得无雾和色彩校正图像的融合结果。 最后,输出图像被转换为混合小波和方向滤波器组(HWD)域,用于去噪和边缘增强。 实验结果表明,该方法可以消除颜色失真,提高水下图像的清晰度。(This paper proposes a better underwater image enhancement method. Firstly, an end-to-end training convolutional neural network is used to measure the input image, and an adaptive bilateral filter is used to process the transmitted image. Then a strategy based on white balance is proposed to eliminate the color deviation of images. The fusion results of fog-free and color correction images are obtained by Laplacian pyramid fusion. Finally, the output image is converted into hybrid wavelet and directional filter bank (HWD) domain for denoising and edge enhancement. The experimental results show that the method can eliminate color distortion and improve the clarity of underwater images.)

文件列表:

hikvision-master\codes\autolevel.m, 2027 , 2019-03-09
hikvision-master\codes\bfilter2.m, 1115 , 2019-03-09
hikvision-master\codes\bfltColor.m, 1354 , 2019-03-09
hikvision-master\codes\bfltGray.m, 1240 , 2019-03-09
hikvision-master\codes\bilateralFilter.m, 6703 , 2019-03-09
hikvision-master\codes\bilateral_filter.m, 1145 , 2019-03-09
hikvision-master\codes\boxfilter.m, 929 , 2019-03-09
hikvision-master\codes\ColorHistogramEqulization.m, 951 , 2019-03-09
hikvision-master\codes\convConst.mexw64, 29184 , 2019-03-09
hikvision-master\codes\convMax.m, 2318 , 2019-03-09
hikvision-master\codes\convolution.m, 772 , 2019-03-09
hikvision-master\codes\darktest.m, 1291 , 2019-03-09
hikvision-master\codes\dark_channelnew.m, 3869 , 2019-03-09
hikvision-master\codes\DEHANZENET.m, 145 , 2019-03-09
hikvision-master\codes\dehaze.m, 700 , 2019-03-09
hikvision-master\codes\dehaze.mat, 31902 , 2019-03-09
hikvision-master\codes\dehaze_fast.m, 1266 , 2019-03-09
hikvision-master\codes\expand.m, 755 , 2019-03-09
hikvision-master\codes\gaussian_pyramid.m, 283 , 2019-03-09
hikvision-master\codes\get_atmosphere.m, 445 , 2019-03-09
hikvision-master\codes\get_dark_channel.m, 585 , 2019-03-09
hikvision-master\codes\get_laplacian.m, 1665 , 2019-03-09
hikvision-master\codes\get_radiance.m, 300 , 2019-03-09
hikvision-master\codes\get_transmission_estimate.m, 256 , 2019-03-09
hikvision-master\codes\guidedfilter.m, 1020 , 2019-03-09
hikvision-master\codes\guided_filter.m, 649 , 2019-03-09
hikvision-master\codes\hpfilter.m, 736 , 2019-03-09
hikvision-master\codes\image2avi.m, 783 , 2019-03-09
hikvision-master\codes\image_dehazing.m, 1254 , 2019-03-23
hikvision-master\codes\lab_to_rgb.m, 90 , 2019-03-09
hikvision-master\codes\laplacian_pyramid.m, 395 , 2019-03-09
hikvision-master\codes\laplacia_conbine.m, 2522 , 2019-03-09
hikvision-master\codes\load_image.m, 158 , 2019-03-09
hikvision-master\codes\main_of_la.m, 741 , 2019-03-09
hikvision-master\codes\main_test_diff_weights.m, 3028 , 2019-03-09
hikvision-master\codes\main_using_optimized.m, 2811 , 2019-03-09
hikvision-master\codes\maxfilt2.m, 1784 , 2019-03-09
hikvision-master\codes\MyHistogramEqulization.m, 1170 , 2019-03-09
hikvision-master\codes\pyramid_reconstruct.m, 308 , 2019-03-09
hikvision-master\codes\RealGWbal.m, 637 , 2019-03-09
hikvision-master\codes\rgb_to_lab.m, 90 , 2019-03-09
hikvision-master\codes\run_cnn.m, 1681 , 2019-03-09
hikvision-master\codes\saliency_detection.m, 2484 , 2019-03-09
hikvision-master\codes\SimplestColorBalance.m, 1749 , 2019-03-09
hikvision-master\codes\sse.hpp, 3125 , 2019-03-09
hikvision-master\codes\ssim.m, 4430 , 2019-03-09
hikvision-master\codes\ssim_score.m, 93 , 2019-03-09
hikvision-master\codes\UICM.m, 777 , 2019-03-09
hikvision-master\codes\UIConM.m, 1881 , 2019-03-09
hikvision-master\codes\UIQM.m, 207 , 2019-03-09
hikvision-master\codes\UISM.m, 2130 , 2019-03-09
hikvision-master\codes\underwater.p, 1319 , 2019-03-09
hikvision-master\codes\underwaterimage2.p, 963 , 2019-03-09
hikvision-master\codes\vanherk.m, 4665 , 2019-03-09
hikvision-master\codes\white_balance.p, 650 , 2019-03-09
hikvision-master\codes\window_sum_filter.m, 608 , 2019-03-09
hikvision-master\demo.m, 434 , 2019-04-27
hikvision-master\Images\001.png, 287992 , 2019-03-09
hikvision-master\Images\002.png, 178049 , 2019-03-23
hikvision-master\Images\003.png, 438725 , 2019-03-23
hikvision-master\Images\004.bmp, 675818 , 2019-03-16
hikvision-master\Images\005.jpg, 23362 , 2019-03-23
hikvision-master\Images\006.jpg, 10311 , 2019-03-23
hikvision-master\Images\007.jpg, 28297 , 2019-03-23
hikvision-master\Images\008.png, 223112 , 2019-03-23
hikvision-master\Images\009.jpg, 66374 , 2019-03-16
hikvision-master\Images\010.jpg, 7571 , 2019-03-23
hikvision-master\Images\011.jpg, 40474 , 2019-03-16
hikvision-master\Images\012.jpg, 1043605 , 2019-03-16
hikvision-master\Images\013.jpg, 420742 , 2019-03-16
hikvision-master\Images\014.jpg, 177970 , 2019-03-16
hikvision-master\Images\015.jpg, 113576 , 2019-03-16
hikvision-master\Images\016.jpg, 116954 , 2019-03-16
hikvision-master\Images\017.jpg, 47446 , 2019-03-16
hikvision-master\Images\018.jpg, 28685 , 2019-03-23
hikvision-master\Images\019.jpg, 28271 , 2019-03-23
hikvision-master\Images\020.jpg, 12690 , 2019-03-23
hikvision-master\Images\021.jpg, 26831 , 2019-03-23
hikvision-master\Images\022.jpg, 39097 , 2019-03-23
hikvision-master\Images\023.jpg, 11800 , 2019-03-23
hikvision-master\Images\024.jpg, 26359 , 2019-03-23
hikvision-master\Images\025.jpg, 28606 , 2019-03-23
hikvision-master\Images\026.jpg, 14047 , 2019-03-23
hikvision-master\Images\027.jpg, 14926 , 2019-03-23
hikvision-master\Images\028.jpg, 23628 , 2019-03-23
hikvision-master\Images\029.jpg, 37295 , 2019-03-23
hikvision-master\Images\030.jpg, 20874 , 2019-03-23
hikvision-master\Images\031.jpg, 91049 , 2019-03-16
hikvision-master\Images\032.jpg, 162554 , 2019-03-23
hikvision-master\Images\033.jpg, 111174 , 2019-03-23
hikvision-master\Images\3001.jpg, 13541 , 2019-03-23
hikvision-master\Images\3002.jpg, 14686 , 2019-03-23
hikvision-master\Images\3003.jpg, 31071 , 2019-03-16
hikvision-master\Images\3004.jpg, 38339 , 2019-03-16
hikvision-master\Images\5001.jpg, 91900 , 2019-03-23
hikvision-master\Images\5002.png, 220444 , 2019-03-23
hikvision-master\Images\5003.jpg, 17096 , 2019-03-09
hikvision-master\Images\50031.jpg, 68190 , 2019-03-23
hikvision-master\Images\5004.jpg, 51855 , 2019-03-23
hikvision-master\Images\5005.jpg, 52676 , 2019-03-23

下载说明:请别用迅雷下载,失败请重下,重下不扣分!

发表评论

0 个回复

  • 三种像处理
    说明:  用c语言写的三种常用的图像处理算法,包括边沿检测与提取,模板匹配和图象腐蚀膨胀细化(language used to write the three commonly used image processing algorithms, including edge detection and extraction. template matching and image thinning corrosion expansion)
    2006-02-13 17:57:06下载
    积分:1
  • matlab实现国旗识别
    利用各种向量函数实现matlab中对于图像特征的识别(image recognition)
    2018-11-13 10:07:39下载
    积分:1
  • fdkReconstruction
    fdk图像重建,需要C++和MATLAB联合使用进行调式(FKD image construction)
    2017-11-27 12:39:37下载
    积分:1
  • 两个圆相互碰撞
    两个圆形相互碰撞(two round collision)
    2004-12-09 21:47:04下载
    积分:1
  • BMPTEst
    实现在图像背景上叠加 下雨 下雪 的效果(Achieve in the BMP image background superimposed rain, snow effect)
    2017-07-19 11:54:09下载
    积分:1
  • OpenCV-Computer-Vision-With-Python
    本书叙述如何使用Python中的OpenCV库实现视频捕捉、图像处理、目标检测等功能。(This book will show you how to use OpenCV s Python bindings to capture video, manipulate images, and track objects with either a normal webcam or a specialized depth sensor, such as the Microsoft Kinect.)
    2021-04-24 16:48:48下载
    积分:1
  • dct1_embed
    数字水印 DCT域嵌入方法 matlab代码(数 ?炙 ???DCT域??入 ??matlab)
    2008-07-04 23:35:56下载
    积分:1
  • 123456
    基于混沌置乱的DCT域灰度级盲水印算法 需要的可以看下~(Based on Chaotic Scrambling DCT-domain blind watermarking algorithm for gray-level needs can facie ~)
    2008-05-05 11:05:12下载
    积分:1
  • 支撑材料
    radon变换Redistribution and use in source and binary forms, with or without modification, are permitted provided that the followin(OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.)
    2017-09-17 08:20:21下载
    积分:1
  • Threshold
    这是一个阈值分割的小例子,利用阈值分割把原始图片转化为二值图像和灰度图像。(This is a small example of a threshold segmentation using thresholding the original image is converted to binary and grayscale images.)
    2016-05-03 09:57:20下载
    积分:1
  • 696516资源总数
  • 106914会员总数
  • 0今日下载