College of Automation Engineering, Fujian Polytechnic of Information Technology, Fuzhou 350003, China.
College of Electrical Engineering and Automation, Fuzhou University, Fuzhou 350116, China.
Sensors (Basel). 2022 Aug 30;22(17):6556. doi: 10.3390/s22176556.
Since the conventional split-merge algorithm is sensitive to the object scale variance and splitting starting point, a piecewise split-merge polygon-approximation method is proposed to extract the object contour features. Specifically, the contour corner is used as the starting point for the contour piecewise approximation to reduce the sensitivity of the contour segment for the starting point; then, the split-merge algorithm is used to implement the polygon approximation for each contour segment. Both the distance ratio and the arc length ratio instead of the distance error are used as the iterative stop condition to improve the robustness to the object scale variance. Both the angle and length as two features describe the shape of the contour polygon; they have a strong coupling relationship since they affect each other along the contour order relationship. To improve the description correction of the contour, these two features are combined to construct a Coupled Hidden Markov Model to detect the object by calculating the probability of the contour feature. The proposed algorithm is validated on ETHZ Shape Classes and INRIA Horses standard datasets. Compared with other contour-based object-detection algorithms, the proposed algorithm reduces the feature number and improves the object-detection rate.
由于传统的分割-合并算法对物体尺度变化和分割起点敏感,因此提出了一种分段分割-合并多边形逼近方法来提取物体轮廓特征。具体来说,使用轮廓角作为轮廓分段逼近的起点,以减少轮廓段对起点的敏感性;然后,使用分割-合并算法对每个轮廓段进行多边形逼近。距离比和弧长比而不是距离误差用作迭代停止条件,以提高对物体尺度变化的鲁棒性。角度和长度作为两个特征描述了轮廓多边形的形状;它们具有很强的耦合关系,因为它们沿着轮廓顺序关系相互影响。为了提高轮廓的描述准确性,将这两个特征结合起来构建耦合隐马尔可夫模型,通过计算轮廓特征的概率来检测物体。所提出的算法在 ETHZ 形状类别和 INRIA 马标准数据集上进行了验证。与其他基于轮廓的目标检测算法相比,所提出的算法减少了特征数量,提高了目标检测率。