Feature Matching-Based Undersea Panoramic Image Stitching in VR Animation

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Yawen Tang, Jianhong Ren
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引用次数: 0

Abstract

The continuous development of virtual reality animation has brought people a new viewing experience. However, there is still a large research space for the construction of virtual scenes. Underwater scenes are complex and diverse, and to obtain more realistic virtual scenes, it is necessary to use video panoramic images as reference modeling in advance. To this end, the study uses the [Formula: see text]-means clustering method to extract key frames from underwater video, and adaptively adjusts the number of clusters to improve the extraction algorithm according to the differences in features. To address the problems of low contrast and severe blurring in underwater images, the study uses an improved non-local a priori recovery method to achieve the recovery process of underwater images. Finally, the final underwater panoramic image is obtained by fading-out image fusion and frame to stitching image synthesis strategy. The experimental analysis shows that the runtime of Model 1 is 21.46[Formula: see text]s, the root mean square error value is 1.89, the structural similarity value is 0.9678, and the average gradient value is 12.59. It can achieve efficient and high-quality panoramic image generation.
基于特征匹配的 VR 动画中的海底全景图像拼接
虚拟现实动画的不断发展给人们带来了全新的观赏体验。然而,虚拟场景的构建仍有很大的研究空间。水下场景复杂多样,要想获得更加逼真的虚拟场景,必须提前使用视频全景图像作为参考建模。为此,本研究采用[公式:见正文]均值聚类方法从水下视频中提取关键帧,并根据特征差异自适应调整聚类数量,改进提取算法。针对水下图像对比度低、模糊严重的问题,研究采用改进的非局部先验恢复方法实现水下图像的恢复过程。最后,通过淡出图像融合和帧到拼接图像合成策略得到最终的水下全景图像。实验分析表明,模型 1 的运行时间为 21.46[公式:见正文]秒,均方根误差值为 1.89,结构相似度值为 0.9678,平均梯度值为 12.59。它可以实现高效、高质量的全景图像生成。
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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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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