Bias Removal Blending to Create Panorama

S. Mahakud, Pradinta Roy
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Abstract

Robust feature extraction and image stitching to create a panorama is a challenging task with various applications in computer vision and robotics. In order to describe and get the best conceivable stitching, this paper put forward an approach of panoramic image stitching and blending process which is divided into three steps. SIFT feature extraction, feature matching and image blending to generate a seamless panorama. The stitched images to create a panorama that have significant illumination changes at the stitched line appear to be unnatural. An image blending algorithm is developed in this paper, based on minimizing sharp edge error by a weighted matrix to solve the problem. First, panorama is generated using feature space of SIFT, so that the images are to be stitched should have maximum crucial features, and performs the rough matching process, followed by RANSAC algorithm for fine matches. Finally applied the different image blending techniques between three images and our method successfully minimizes the error to have a uniform illumination over panorama. The results are compared with the two blending processes. Results are demonstrated by visual assessment and quantitatively by calculating normalized edges. Experimental results show that our algorithm is effective and able to make sharp changes disappear at image joins. This method will be very useful for tracking aerial target near launchpad with multiple fixed cameras with same Field of View.
偏见去除混合创建全景
鲁棒特征提取和图像拼接以创建全景是一项具有挑战性的任务,在计算机视觉和机器人技术中有各种应用。为了描述全景图像的拼接并获得最佳拼接效果,本文提出了一种全景图像拼接与融合的方法,该方法分为三个步骤。SIFT特征提取、特征匹配和图像混合生成无缝全景图。缝合的图像创造了一个全景,在缝合线处有明显的照明变化,这似乎是不自然的。本文提出了一种基于加权矩阵最小化锐边误差的图像混合算法。首先,利用SIFT的特征空间生成全景图,使待拼接图像具有最大的关键特征,并进行粗匹配,然后使用RANSAC算法进行精细匹配。最后,在三幅图像之间应用不同的图像混合技术,我们的方法成功地将误差最小化,从而在全景上获得均匀的照明。结果与两种混合工艺进行了比较。结果通过视觉评估和定量计算归一化边缘来证明。实验结果表明,该算法能够有效地消除图像连接处的急剧变化。该方法对于多台相同视场的固定摄像机跟踪发射台附近的空中目标非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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