基于大位移光流的图像预测模型

N. Verma, Aakansha Mishra
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引用次数: 6

摘要

本文提出了一种基于大位移光流的图像预测模型,通过应用过去和现在的图像帧来生成未来的图像帧。预测模型是一个人工神经网络(ANN)和径向基函数神经网络(RBFNN)模型,其输入数据集是大位移光流对给定图像序列中每个像素强度估计的速度的水平和垂直分量。过去已经有大量的研究为一组给定的图像帧生成未来的图像帧。通过Canny边缘检测指标(CIM)和平均结构相似度指标(MSSIM)对生成的图像质量进行评价。对于我们提出的算法,与最新的现有算法相比,发现所有未来生成的图像的CIM和MSSIM索引更好。本研究的目的是开发一种通用框架,可以预测任何给定图像序列中具有大位移的物体的未来图像帧。在本文中,我们对所开发的图像预测模型进行了着陆喷气式战斗机图像序列的验证,与现有的图像预测模型相比,所获得的性能指标更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large displacement optical flow based image predictor model
This paper proposes a Large Displacement Optical Flow based Image Predictor Model for generating future image frames by applying past and present image frames. The predictor model is an Artificial Neural Network (ANN) and Radial Basis Function Neural Network (RBFNN) Model whose input set of data is horizontal and vertical components of velocities estimated using Large Displacement Optical Flow for every pixel intensity in a given image sequence. There has been a significant amount of research in the past to generate future image frames for a given set of image frames. The quality of generated images is evaluated by Canny's edge detection Index Metric (CIM) and Mean Structure Similarity Index Metric (MSSIM). For our proposed algorithm, CIM and MSSIM indices for all the future generated images are found better when compared with the most recent existing algorithms for future image frame generation. The objective of this study is to develop a generalized framework that can predict future image frames for any given image sequence with large displacements of objects. In this paper, we have validated our developed Image Predictor Model on an image sequence of landing jet fighter and obtained performance indices are found better as compared to most recent existing image predictor models.
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