首页> 外文会议>International Conference on Mining Intelligence and Knowledge Exploration >Boundary Detection of Objects in Digital Images Using Bit-Planes and Threshold Modified Canny Method
【24h】

Boundary Detection of Objects in Digital Images Using Bit-Planes and Threshold Modified Canny Method

机译:使用比特平面和阈值修正的Canny方法数字图像对象的边界检测

获取原文

摘要

Two novel Canny-based boundary detection techniques are presented in this paper. Canny edge detection has gained popularity over the period due to its potential in edge detection. However, the edges detected by Canny are highly superfluous to extract the boundary of the objects in an image. The Modified Canny methods address this issue by modifying the parameter of Canny. The first method namely Threshold Modified Canny (MC-T) uses the Mean of the input image as threshold. MC-T is found to produce the boundaries even on the high-contrast images. The Second method, Bit-planes and Threshold Modified Canny (MC-BT) performs edge detection on the three intensity significant bit-planes using Mean of the input image as Threshold. This technique has also produced promising results in detecting the image boundary. The second method as it works only on three bit planes information of the input image, it reduces insignificant details and yields significant object boundaries. The result of the two proposed techniques, suitably finds place in object recognition, pattern recognition/matching etc. where boundary detection is an important component. These approaches are much promising in terms of clear boundary detection of an object, as boundary detection by conventional methods is very time consuming.
机译:本文提出了两种新的基于罐的边界检测技术。由于其在边缘检测的潜力,罐头边缘检测在此期间获得了普及。然而,Canny检测到的边缘是高度多余的,以提取图像中的对象的边界。修改后的Canny方法通过修改Canny的参数来解决此问题。第一方法即阈值修改的Canny(MC-T)使用输入图像的平均值作为阈值。即使在高对比度图像上也被发现MC-T产生界限。第二种方法,比特平面和阈值修改的Canny(MC-BT)使用输入图像的三个强度有效位平面上的边缘检测作为阈值。该技术还产生了有希望的导致检测图像边界。第二种方法仅在输入图像的三个比特平面信息上工作,它会减少微不足道的细节并产生重大的对象边界。两个所提出的技术的结果,适当地在对象识别,模式识别/匹配等中找到位置。边界检测是重要组成部分的模式识别/匹配等。这些方法在对物体的清晰边界检测方面非常有希望,因为传统方法的边界检测非常耗时。

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