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Automatic microseismic events detection using morphological multiscale top-hat transformation
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作者 Guo-Jun Shang Wei-Lin Huang +3 位作者 Li-Kun Yuan Jin-Song Shen Fei Gao Li-Song Zhao 《Petroleum Science》 SCIE CAS CSCD 2022年第5期2027-2045,共19页
The occurrence of microseismic is not random but is related to the physical properties of the underground medium.Due to the low intensity and the influence of noise,microseismic eventually lead to poor signal-to-noise... The occurrence of microseismic is not random but is related to the physical properties of the underground medium.Due to the low intensity and the influence of noise,microseismic eventually lead to poor signal-to-noise ratio.We proposed a method for automatic detection of microseismic events by adoption of multiscale top-hat transformation.The method is based on the difference between the signal and noise in the multiscale top-hat transform section and achieves the detection on a specific section.The microseismic data are decomposed into different scales by multiscale morphology top-hat transformation firstly.Then the potential microseismic events could be detected by picking up the peak value in the multiscale top-hat section,and the characteristic profile obtains the start point with a specific threshold value.Finally,the synthetic data experiences demonstrate the advantages of this method under strong and weak noisy conditions,and the filed data example also shows its reliability and adaptability. 展开更多
关键词 Microseismic events detection Multiscale morphology top-hat transformation
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An infrared and visible image fusion method based upon multi-scale and top-hat transforms 被引量:1
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作者 何贵青 张琪琦 +3 位作者 纪佳琪 董丹丹 张海曦 王珺 《Chinese Physics B》 SCIE EI CAS CSCD 2018年第11期340-348,共9页
The high-frequency components in the traditional multi-scale transform method are approximately sparse, which can represent different information of the details. But in the low-frequency component, the coefficients ar... The high-frequency components in the traditional multi-scale transform method are approximately sparse, which can represent different information of the details. But in the low-frequency component, the coefficients around the zero value are very few, so we cannot sparsely represent low-frequency image information. The low-frequency component contains the main energy of the image and depicts the profile of the image. Direct fusion of the low-frequency component will not be conducive to obtain highly accurate fusion result. Therefore, this paper presents an infrared and visible image fusion method combining the multi-scale and top-hat transforms. On one hand, the new top-hat-transform can effectively extract the salient features of the low-frequency component. On the other hand, the multi-scale transform can extract highfrequency detailed information in multiple scales and from diverse directions. The combination of the two methods is conducive to the acquisition of more characteristics and more accurate fusion results. Among them, for the low-frequency component, a new type of top-hat transform is used to extract low-frequency features, and then different fusion rules are applied to fuse the low-frequency features and low-frequency background; for high-frequency components, the product of characteristics method is used to integrate the detailed information in high-frequency. Experimental results show that the proposed algorithm can obtain more detailed information and clearer infrared target fusion results than the traditional multiscale transform methods. Compared with the state-of-the-art fusion methods based on sparse representation, the proposed algorithm is simple and efficacious, and the time consumption is significantly reduced. 展开更多
关键词 infrared and visible image fusion multi-scale transform mathematical morphology top-hat trans- form
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Medical Image Enhancement Using Morphological Transformation
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作者 Raihan Firoz Md. Shahjahan Ali +3 位作者 M. Nasir Uddin Khan Md. Khalid Hossain Md. Khairul Islam Md. Shahinuzzaman 《Journal of Data Analysis and Information Processing》 2016年第1期1-12,共12页
Medical imaging includes different modalities and processes to visualize the interior of human body for diagnostic and treatment purpose. However, one of the most common degradations in medical images is their poor co... Medical imaging includes different modalities and processes to visualize the interior of human body for diagnostic and treatment purpose. However, one of the most common degradations in medical images is their poor contrast quality and noise. The existence of several objects and the close proximity of adjacent pixels values make the diagnostic process a daunting task. The idea of image enhancement techniques is to improve the quality of an image. In this study, morphological transform operation is carried out on medical images to enhance the contrast and quality. A disk shaped mask is used in Top-Hat and Bottom-Hat transform and this mask plays a vital role in the operation. Different types and sizes of medical images need different masks so that they can be successfully enhanced. The method shown in this study takes a mask of an arbitrary size and keeps changing its size until an optimum enhanced image is obtained from the transformation operation. The enhancement is achieved via an iterative exfoliation process. The results indicate that this method improves the contrast of medical images and can help with better diagnosis. 展开更多
关键词 Medical Image Image Enhancement Morphological transform top-hat transform Bottom-Hat transform MATLAB
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基于支持度变换和top-hat分解的双色中波红外图像融合 被引量:3
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作者 蔺素珍 杨风暴 陈磊 《光谱学与光谱分析》 SCIE EI CAS CSCD 北大核心 2014年第4期1144-1150,共7页
为了解决用多尺度top-hat分解法融合双色中波红外图像时经常存在对比度提升有限、边缘区域失真较重的问题,提出了基于支持度变换和top-hat分解相结合的融合方法。先用支持度变换法将双色中波图像分解为低频图像和支持度图像序列;再从最... 为了解决用多尺度top-hat分解法融合双色中波红外图像时经常存在对比度提升有限、边缘区域失真较重的问题,提出了基于支持度变换和top-hat分解相结合的融合方法。先用支持度变换法将双色中波图像分解为低频图像和支持度图像序列;再从最后一层低频图像中用多尺度top-hat分解法提取各自的亮信息和暗信息;用灰度值取大法分别融合亮信息和暗信息;通过灰度值归一化和高斯滤波分别增强亮、暗信息融合图像;然后融合两低频图像和亮、暗信息增强图像;将融合图像作为新的低频图像和用灰度值取大法融合得到的支持度融合图像序列进行支持度逆变换,得到最终融合图像。该方法的实验结果同采用单一的支持度变换法融合和多尺度top-hat分解法融合相比,融合图像的对比度提升了11.69%,失真度降低了63.42%,局部粗糙度提高了38.12%。说明提出的从低频图像提取亮暗信息,并经过分别融合、增强,再与低频图像进行融合,能有效破解红外融合图像对比度提升和边缘区域失真度降低之间的矛盾,为提高图像融合质量提供了新方法。 展开更多
关键词 双色中波 图像融合 支持度变换 top-hat分解 Dual-color mid-wave infrared (MWIR) Support value transform (SVT)
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A Novel Ship Wake Detection Algorithm Based on WTHT and Radon Transform
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作者 ZHAO Moxin ZHANG Yunhua +2 位作者 DONG Xiao LI Dong YANG Jiefang 《空间科学学报》 CAS CSCD 北大核心 2021年第5期836-844,共9页
This paper proposes a novel ship wake detection algorithm based on the White Top-hat Transform(WTHT)and the Radon transform,which aims to improve the contrast between the ship wake and the background so as to improve ... This paper proposes a novel ship wake detection algorithm based on the White Top-hat Transform(WTHT)and the Radon transform,which aims to improve the contrast between the ship wake and the background so as to improve the detection performance on Synthetic Aperture Radar(SAR)images.The proposed algorithm includes two major processes,and one is to improve the contrast and another one is to locate the ship wake.In high sea state conditions,the contrast of ship wake and background can be very low,which makes it difficult to detect.In the first step,the proposed contrast improvement algorithm is applied to improving the contrast which helps for improving the detection performance.An attribute filter based on edge detection result is adopted here.In the second step the contrast improved image is transformed into the Radon domain followed by peak extraction process to find the wake,the WTHT is used once more in this step.Finally,in the last step,the wake is overlapped on the original image.Experimental results on Tiangong-2 Interferometric Imaging Radar Altimeter(InIRA)images are presented and compared with that obtained by using the classical algorithm,and in this way,the better performance of our algorithm is demonstrated. 展开更多
关键词 White top-hat transform (WTHT) RADON transform SAR image SHIP WAKE CONTRAST improvement InIRA
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Robust Lane Detection and Tracking Based on Machine Vision 被引量:2
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作者 FAN Guotian LI Bo +2 位作者 HAN Qin JIAO Rihua QU Gang 《ZTE Communications》 2020年第4期69-77,共9页
Lane detection based on machine vision,a key application in intelligent transportation,is generally characterized by gradient information of lane edge and plays an important role in advanced driver assistance systems(... Lane detection based on machine vision,a key application in intelligent transportation,is generally characterized by gradient information of lane edge and plays an important role in advanced driver assistance systems(ADAS).However,gradient information varies with illumination changes.In the complex scenes of urban roads,highlight and shadow have effects on the detection,and non-lane objects also lead to false positives.In order to improve the accuracy of detection and meet the robustness requirement,this paper proposes a method of using top-hat transformation to enhance the contrast and filter out the interference of non-lane objects.And then the threshold segmentation algorithm based on local statistical information and Hough transform algorithm with polar angle and distance constraint are used for lane fitting.Finally,Kalman filter is used to correct lane lines which are wrong detected or missed.The experimental results show that computation times meet the real-time requirements,and the overall detection rate of the proposed method is 95.63%. 展开更多
关键词 ADAS Hough transform Kalman filter polar angle and distance top-hat
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