期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
微机数字图像处理系统在医学中的应用
1
作者 庄伟 《保山学院学报》 1994年第1期99-103,共5页
本文在对医学成像系统、医学图像分析的基础上,介绍了SDIPS—MI医学图像微机数字处理系统在医疗诊断中的应用,作者在该系统与医用X光电视诊断成像系统联机运行过程中,采集、处理了一批图像。在有效改善医学成像系统的最终成像质量,提高... 本文在对医学成像系统、医学图像分析的基础上,介绍了SDIPS—MI医学图像微机数字处理系统在医疗诊断中的应用,作者在该系统与医用X光电视诊断成像系统联机运行过程中,采集、处理了一批图像。在有效改善医学成像系统的最终成像质量,提高图像的视觉检测能力,提高诊断准确率,减低受检人体及医师在诊断过程中所受辐射伤害,实现成像系统升级方面取得了较好的效果。 展开更多
关键词 医学成像 图像检测力 图像处理
下载PDF
Passive detection of copy-paste forgery between JPEG images 被引量:5
2
作者 李香花 赵于前 +2 位作者 廖苗 F.Y.Shih Y.Q.Shi 《Journal of Central South University》 SCIE EI CAS 2012年第10期2839-2851,共13页
A blind digital image forensic method for detecting copy-paste forgery between JPEG images was proposed.Two copy-paste tampering scenarios were introduced at first:the tampered image was saved in an uncompressed forma... A blind digital image forensic method for detecting copy-paste forgery between JPEG images was proposed.Two copy-paste tampering scenarios were introduced at first:the tampered image was saved in an uncompressed format or in a JPEG compressed format.Then the proposed detection method was analyzed and simulated for all the cases of the two tampering scenarios.The tampered region is detected by computing the averaged sum of absolute difference(ASAD) images between the examined image and a resaved JPEG compressed image at different quality factors.The experimental results show the advantages of the proposed method:capability of detecting small and/or multiple tampered regions,simple computation,and hence fast speed in processing. 展开更多
关键词 image forensic JPEG compression copy-paste tbrgery passive detection tampered image compressed image
下载PDF
Improved YOLOX Remote Sensing Image Object Detection Algorithm
3
作者 LIU Beibei DENG Yansong +3 位作者 LYU He ZHOU Chenchen TANG Xuezhi XIANG Wei 《Wuhan University Journal of Natural Sciences》 CAS 2024年第5期439-452,共14页
Remote sensing image object detection is one of the core tasks of remote sensing image processing.In recent years,with the development of deep learning,great progress has been made in object detection in remote sensin... Remote sensing image object detection is one of the core tasks of remote sensing image processing.In recent years,with the development of deep learning,great progress has been made in object detection in remote sensing.However,the problems of dense small targets,complex backgrounds and poor target positioning accuracy in remote sensing images make the detection of remote sensing targets still difficult.In order to solve these problems,this research proposes a remote sensing image object detection algorithm based on improved YOLOX-S.Firstly,the Efficient Channel Attention(ECA)module is introduced to improve the network's ability to extract features in the image and suppress useless information such as background;Secondly,the loss function is optimized to improve the regression accuracy of the target bounding box.We evaluate the effectiveness of our algorithm on the NWPU VHR-10 remote sensing image dataset,the experimental results show that the detection accuracy of the algorithm can reach 95.5%,without increasing the amount of parameters.It is significantly improved compared with that of the original YOLOX-S network,and the detection performance is much better than that of some other mainstream remote sensing image detection methods.Besides,our method also shows good generalization detection performance in experiments on aircraft images in the RSOD dataset. 展开更多
关键词 remote sensing images object detection YOLOX-S attention module loss function
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部