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Gaussian and Laplacian of Gaussian weighting functions for robust feature based tracking

机译:高斯加权函数的高斯和拉普拉斯算子,用于基于鲁棒特征的跟踪

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摘要

Object tracking algorithms found extensively in the computer vision literature either are inhibited by various assumptions such as simplicity of motion and shape characteristics of objects or are overly sensitive to noise. We propose and successfully test two new weighting functions for a feature-based object-tracking algorithm to achieve superior performance in tracking motion of non-rigid objects under noisy conditions. We present the implications of using the weighting functions in real and synthetic image sequences to overcome the noise produced at acquisition source (charge coupled device—CCD), or in the background environment. We also present a mechanism for determining the optimal weighting function based on image parameters, more specifically the edge characteristics of objects in the image.
机译:在计算机视觉文献中广泛发现的对象跟踪算法要么受到各种假设(例如运动的简单性和对象的形状特征)的抑制,要么对噪声过于敏感。我们提出并成功测试了两个新的加权功能,用于基于特征的对象跟踪算法,以在嘈杂条件下跟踪非刚性对象的运动中实现出色的性能。我们提出了在真实和合成图像序列中使用加权函数来克服在采集源(电荷耦合器件CCD)或背景环境中产生的噪声的含义。我们还提出了一种基于图像参数(更具体地说是图像中对象的边缘特征)确定最佳加权函数的机制。

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