Object detection on inertia surface by improved watershed transform

Mai Lihong, Zhang Yu, Yang Chunling, Hu Xiaoan
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Abstract

This paper presents a new scheme for object detection in a complex background. Firstly a Difference Offset of Gaussian filter is introduced to calculate a feature inertia surface of an image, this feature inertia image preserves certain region ridges in an image, while reducing insignificant details. After skeletonization on the inertia surface, an improved marker extraction for watershed transform is carried out to detect objects, followed by a merging operation based on a criterion suggested according to the measurement of texture similarity. Each located area is finally verified by Nearest Neighboring classifiers trained for different kinds of objects. Detection experiments on face areas and character regions have shown its feasibility.
基于改进分水岭变换的惯性曲面目标检测
本文提出了一种新的复杂背景下的目标检测方案。首先,引入高斯滤波的差分偏移来计算图像的特征惯量面,该特征惯量面保留了图像中的某些区域脊,同时减少了不重要的细节。在惯性表面上进行骨架化处理后,进行改进的分水岭变换标记提取来检测目标,然后根据纹理相似度的测量建议的准则进行合并操作。每个定位的区域最后由针对不同类型对象训练的最近邻分类器进行验证。人脸区域和特征区域的检测实验表明了该方法的可行性。
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