Object Detection by 2-D Continuous Wavelet Transform

V. K. Reddy, Kiran Kumar Siramoju, P. Sircar
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引用次数: 6

Abstract

The use of two dimensional (2-D) continuous wavelet analysis has not been extensive for image processing using wavelets. It has been overshadowed by the 2-D discrete dyadic wavelet transform (DWT) due to its compactness and excellent performance in coding, data compression, image reconstruction, etc. However, the 2-D DWT has some restrictions on the scale and position parameters, and it does not detect all the features of an image unless properly tuned. The 2-D continuous wavelet transform (CWT), on the other hand, is more flexible and provides complete control over the scale and position parameters, and thus it is capable of extracting various features of an image, which cannot be accomplished by the DWT. It is shown that sharp edges can be extracted at lower scales of the 2-D CWT. In this paper, an algorithm is developed to detect focused objects in an image/video using the 2-D CWT. The first step in this algorithm is to extract the edges of focused objects using the 2-D CWT. The object detected is converted to binary image. Some applications of object detection method in image and video processing are mentioned.
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二维连续小波变换的目标检测
二维连续小波分析在小波图像处理中的应用还不广泛。由于二维离散二进小波变换(DWT)的紧凑性和在编码、数据压缩、图像重建等方面的优异性能,它已被二维离散二进小波变换(DWT)所取代。然而,二维DWT在尺度和位置参数上有一些限制,并且除非适当调整,否则它不能检测到图像的所有特征。另一方面,二维连续小波变换(CWT)更加灵活,可以完全控制尺度和位置参数,从而能够提取图像的各种特征,这是小波变换无法完成的。结果表明,在二维CWT的较低尺度上可以提取出尖锐的边缘。本文提出了一种利用二维CWT检测图像/视频中聚焦物体的算法。该算法的第一步是利用二维CWT提取聚焦对象的边缘。检测到的物体被转换成二值图像。介绍了目标检测方法在图像和视频处理中的一些应用。
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