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SUSAN算子

SUSAN算子的相关文献在2000年到2021年内共计93篇,主要集中在自动化技术、计算机技术、无线电电子学、电信技术、测绘学 等领域,其中期刊论文81篇、会议论文1篇、专利文献1050篇;相关期刊64种,包括测绘工程、弹箭与制导学报、信息技术等; 相关会议1种,包括首届智能CAD与数字娱乐学术会议等;SUSAN算子的相关文献由242位作者贡献,包括宋沂鹏、张婷、朱军林等。

SUSAN算子—发文量

期刊论文>

论文:81 占比:7.16%

会议论文>

论文:1 占比:0.09%

专利文献>

论文:1050 占比:92.76%

总计:1132篇

SUSAN算子—发文趋势图

SUSAN算子

-研究学者

  • 宋沂鹏
  • 张婷
  • 朱军林
  • 朱秋煜
  • 杨杰
  • 伍海波
  • 余天洪
  • 刘蓉
  • 吴一全
  • 吴以凡
  • 期刊论文
  • 会议论文
  • 专利文献

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    • 郝晓丽; 高永
    • 摘要: 在传统视频关键帧提取过程中,需要对每一帧视频图像进行特征提取、图像匹配、重复检测等大量计算,导致算法运行时间过长.对此,该文提出了CUDA框架下的关键帧互信息熵多级提取算法.在CPU调度及GPU划分线程基础上,依据帧间三通道互信息熵,将视频序列初次划分为静态片段类和动态片段类;运用相邻帧间互信息量极小值法,将动态片段划分成多个关键子类,在关键子类中选取预备关键帧;并运用SUSAN算子分块计算,快速完成帧间的边缘匹配,从预备关键帧中滤除冗余,得到最终的关键帧序列.实验结果表明,与其他算法相比,该算法的查全率和查准率均为91%以上,提取关键帧的数量平均减少约42.82%,降低了视频数据量的存储,与其他CPU串行方法相比,其关键帧提取时间减少约50%,提高了算法运算效率.
    • 沈婷婷; 仲思东; 鄢文浩
    • 摘要: 为解决高斯混合模型中噪声和光照变化带来的影响以及运算量大等问题,先通过帧差法确定运动目标大致区域,筛选后在确定区域内采用混合高斯模型重建背景,并运用SUSAN算子进行边缘检测,形态学处理后将两者结果进行“与”运算;区域外部分按照当前帧背景更新,两部分综合得到最终的运动目标.实验结果显示,改进算法有良好的鲁棒性,能很好地适应光照变化,检测结果高效准确,可以应用于目标跟踪领域.%Gaussian mixture model has a huge computation cost,and is affected by the changes of noise and illumination.To solve the problems,frame difference method is used to roughly determine the moving target areas.After screening,Gaussian mixture model is applied in the determined area to reconstruct the background,and SUSAN operator is used to extract the edge at the same time.After morphological processing,AND operation is implemented to the results.In the meanwhile,the outside area is updated according to current frame.The moving target is obtained by integrating the two parts.Experiments show that the improved algorithm has good robustness and is well adaptive to illumination changes.With accurate and efficient detection performance,the improved algorithm can be applied to target tracking field.
    • 李姗姗; 陈莉; 张永新; 尹化荣; 袁娅婷
    • 摘要: 目的 针对传统彩色图像边缘检测方法中未充分利用图像色度信息、颜色模型间非线性转换过程中时间和空间的大量耗费、算法实现复杂等问题,将四元数引入最小核值相似区(SUSAN)算法中,提出一种RGB空间下的结合四元数与最小核值相似区的边缘检测算法.方法 该算法首先对彩色图像进行四元数描述,然后用改进的SUSAN算子进行边缘检测.针对其中单一几何阈值g的限制,以及检测出的边缘较粗等问题,本文采用Otsu算法自适应获取双几何阈值,再对弱边缘点集进行边缘生长,最后根据USAN重心及其对称最长轴来确定边缘局部方向,实现对边缘点的局部非极大值抑制,得到最终细化后的边缘图像.结果 实验选取1幅合成彩色图像及3幅标准图像库图像,与彩色Canny算法、SUSAN算法,及采用单阈值的本文算法进行对比,并采用Pratt品质因数衡量边缘定位精度.本文算法能够检测出亮度相近的不同颜色区域之间的边缘,且提取的边缘比较连续、细致,漏检边缘较少.与公认边缘检测效果较好的彩色Canny算法相比,本文算法的品质因数提高了0.012 0,耗时缩短了2.527 9 s.结论 本文提出了一种结合四元数与最小核值相似区的边缘检测算法,实现了四元数与SUSAN算子的有效融合.实验结果表明,该算法能够提高边缘定位精度,对弱噪声具有较好的抑制能力,适用于对实时性要求不高的低层次彩色图像处理.%Objective Edge detection is one of the most fundamental operations in image processing and scene analysis systems because edges form the outline of an object.Edge detection is the procedure of detecting meaningful discontinuities of the image function and providing an effective means for image segmentation,image fusion,and pattern recognition.Grayimage edge detection has been developed with relative saturation;however,the color image edge detection has not received the same attention.Up to now,most of the existing color image edge detection algorithms are monochromatic-based methods,which produce a superior effect than traditional gray-value methods.Both methods do not completely utilize the chromatic information.Meanwhile,vector-valued techniques treat the color information as color vectors in a vector space provided with a vector norm,thus solving such a problem.However,the vector-valued methods have high complexity and large computation.A color image with three components can be represented in quaternion form as pure quaternions,which can well preserve the vector features of the image pixels.Consequently,the edge detection algorithm combining the smallest univalue segment assimilating nucleus and quatemion in RGB space was proposed to deal with several problems in the traditional color image edge detection methods,such as the insufficient use of chromatic information in color images,the large amount of time and space consumption in the process of nonlinear transformation between color models,and the complex algorithm implementation.Method For a preferable color image edge detection result,we consider the algebraic operation and spatial characteristics regarding the quaternion,as well as the simple and effective edge detection performance of the SUSAN algorithm in our method.The steps of this approach can be summarized as follows.First,the color images are represented with pure quaternions and normalize each pixel.Second,edge detection is performed using the SUSAN operator,which generates a thick edge because of the constraint of the fixed geometry threshold g;hence,the Otsu algorithm is applied to adaptively capture the double geometry thresholds.Third,we make the edge growth on the weak edge set and determine the local edge direction according to the center of gravity and the longest axis of symmetry of SUSAN.Finally,we perform the local non-maximum suppression operation to obtain the final thinned edge image.Result Three classic color images and a synthetic color image with four blocks for specific colors are selected to make a comparison with other edge detection algorithms,including the color Canny algorithm,the SUSAN algorithm,and our method with a fixed threshold to demonstrate the effectiveness and robustness of our method.Two different forms of the geometric threshold are established in our method is to verify whether the selection of the threshold is influential to the final effect of the edge image.We used the Pratt quality factor to conduct a quantitative evaluation of edge positioning accuracy.Experiment results show that our method with less lost edges can detect the edges of different color regions with similar brightness,and the extracted edges are continuous and meticulous.In addition,for the color images with weak noise,our method is very robust that it still can effectively detect the real edge points.Compared with the color Canny algorithm which has the preferable effect of edge detection in color images,the quality factor of our method improved by 0.012 0,and the operation time was reduced by 2.527 9 s.Conclusion In this thesis,we proposed an edge detection algorithm combining the smallest univalue segment assimilating nucleus and quaternion,realizing the effective fusion of quatemion and the SUSAN operator.Setting several different comparative experiments,subjective and objective evaluations show that our method effectively suppressed the weak noise and improved the accuracy of edge localization,which is really suitable for low-level color image processing with low demand in real-time.
    • 李让军; 叶冬
    • 摘要: 为了准确识别道路的车道线,采用45° Sobel 边缘算子对中值滤波后的道路图像进行增强,进而采用SUSAN算子和Otsu 算法相结合的方法将图像分割,利用分区 Hough变换进行拟合,识别出车道线.实验结果表明,采用改进的SUSAN算子分割后的道路图像能够准确提取车道线参数,拟合出车道线,去除噪声,节省了后续Hough变换的时间,提高了算法的抗噪性能和实时性.%In order to identify the lane of the road image accurately, the road image which was filtered by median filter was enhanced by 45° Sobel algorithm.Then the image was segmented by using the method of combining the SUSAN operator and the Otsu algorithm.At last, the lanes were identified by zoning Hough transformation.The results show that the road image which was segmented by improved SUSAN operators can obtain the effective feature points, remove noise, and save time of Hough transformation, improve the anti-noise performance and real-time performance of algorithm.
    • 吴一全; 王凯
    • 摘要: 针对目标区域角点分布密集和背景区域相对稀疏的图像,为了更准确、完整地提取目标区域的边缘,消除背景,提出一种基于SUSAN算子和角点判别因子的目标边缘检测方法.实验结果表明,与Canny方法、改进的非下采样Contourlet模极大值方法和改进的蜂群方法等边缘检测方法相比,本文提出的方法能有效避免背景区域的干扰,精确定位目标区域,所得边缘轮廓连通完整、细节丰富.该方法具有较优的主观视觉效果和较强的抗噪能力,且运行时间较少.
    • 李惠光; 李敏; 袁仁辉; 沙晓鹏; 邵暖
    • 摘要: 针对显微视觉系统中大范围聚焦问题,本文提出新的聚焦搜索策略。该策略将改进的 SUSAN 算子和小波变换算子组合提出新的聚焦评价函数,并根据评价函数单峰性以及峰值两侧变化陡峭的特点将聚焦曲线分为实现快速搜索的平缓区和高斯拟合的陡峭区,采用自行研发的显微视觉系统对搜索策略进行验证,按照拟合结果驱动电机直接到达焦平面。实验结果表明,新的聚焦搜索策略在实时性和准确性上具有更好的效果。%Aiming at the problem of large range focus in micro-vision system, a new focus search strategy was proposed. The improved SUSAN operator and wavelet transform operator were combined as a new focus evaluation function, which has the advantages of single peak and steep peak on both sides of the peak that was divided into a quick search of the flat area and Gaussian fitting steep zone. The effectiveness of the search strategy was verified based on the self-developed micro-vision system. Then, the motor was driven directly to reach the focal plane according to the fitting results. The experimental results show that the new focus search strategy has better effect on the aspects of the real time and accuracy.
    • 王冠群; 马苗; 张艳宁; 周涛
    • 摘要: Since the traditional SUSAN detector is only appropriate to detect corners in a single scale, a multi-scale SUSAN method on corner detection is presented which is based on Gaussian transform. This method employs the multi-scale prop-erty of Gaussian transform to create a Gaussian pyramid by implementing a different scales Gaussian transform to the original digital image. Then an improved SUSAN detector with an adaptive threshold is further employed to gain corner candidates in different multi-scales. Finally, after every candidate is relocated to a certain position in the original image, the real corners are selected with reference to their certain neighborhood information. Experimental results show that this method not only can detect corners effectively in different scales, but also is obviously superior to some existing methods in terms of the misdetection rate and accuracy rate.%针对传统SUSAN算子只能在单一尺度下检测图像中角点的不足,提出一种基于高斯变换的多尺度SUSAN角点检测方法。该方法利用高斯变换获得待检测图像的多尺度分层图像,以构建高斯金字塔,结合自适应阈值的SUSAN算子检测出不同尺度下的角点作为候选角点,将其还原到原始图像中的相应位置构成候选角点集,在候选角点集中经小邻域信息筛选获得最终角点。实验结果表明,该方法不仅能够在不同尺度下有效获取有用的角点信息,而且提高SUSAN算子正确率的同时,降低了角点的伪检率。
    • 王仁丽; 代月明
    • 摘要: Susan 算子是一种基于灰度的特征点获取方法,适用于图像中边缘的检测、角点的检测,论文研究了图像旋转,图像平移和阈值大小对 Susan 特征点匹配的影响。结果表明,图像旋转和图像平移对特征点的影响不大。当阈值变小时,匹配特征点的效果变佳。该方法处理图像容易实现,对噪声的处理能力强。而且检测目标的速度较快,比较适合应用于图像特征提取中。%Susan operator is a method of obtaining feature points based on gray ,and widely used to detect the image ed‐ges and corners .The effect of image rotation ,image translation and threshold size on matching of Susan feature point is stud‐ied in the paper .The results show that image rotation and translation have little effect on the matching .When the threshold becomes smaller ,the matching effect becomes better .This method is simple to implement ,fast processing speed ,high noise immunity and so on ,especially suitable for image feature extraction .
    • 邢明; 刘瑜; 任佳; 章思恩; 胡轩
    • 摘要: SIFT(scale invariant feature transform)是一种对图像旋转、缩放、仿射变换具有良好不变性的机器视觉算法,在图像匹配识别上具有广泛的应用.但SIFT算法在对草地障碍物识别上存在误匹配率高和运算速度慢的问题,针对该问题提出一种SIFT-SUSAN融合算法.算法引入SUSAN算子检测并提取障碍物特征边角点,使用SUSAN提取的特征边角点和SIFT提取的特征点融合计算,对SIFT的提取特征点精简筛选后进行特征匹配.实验结果验证该算法具有可行性和有效性,提高了匹配的准确率和识别速度,且具有较好的鲁棒性.
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