High Accuracy Optical Flow based future image frame predictor model

N. Verma, Eeshan Gunesh Dhekane, G. S. Rao, Aakansha Mishra
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引用次数: 1

Abstract

In this paper, High Accuracy Optical Flow (HAOF) based future image frames generator model is proposed. The aim of this work is to develop a framework which is capable of predicting the future image frames for any given sequence of images. The requirement is to predict large number of image frames with better clarity and better accuracy. In the first step, the vertical and horizontal components of flow velocities of the intensities at each pixel positions are estimated using High Accuracy Optical Flow (HAOF) algorithm. The estimated flow velocities in all the image frames at all the pixel positions are then modeled using separate Artificial Neural Networks (ANN). The trained models are used to predict the flow velocities of intensities at all the pixel positions in the future image frames. The intensities at all the pixel positions are mapped to new positions by using the velocities predicted by the model. The concept of Bilinear Interpolation is used to obtain predicted images from the new positions of intensities. The quality of the predicted image frames is evaluated by using Canny Edge Detection based Image Comparison Metric (CIM) and Mean Structural Similarity Index Measure (MSSIM). The predictor model is simulated by applying it on the two image sequences-an image sequence of a fighter jet landing over the navy deck, and another image sequence of a train moving on a bridge. The proposed framework is found to give promising results with better clarity and better accuracy.
基于高精度光流的未来图像帧预测模型
提出了一种基于高精度光流(HAOF)的未来图像帧生成模型。这项工作的目的是开发一个能够预测任何给定图像序列的未来图像帧的框架。要求以更好的清晰度和准确性预测大量的图像帧。首先,利用高精度光流(High Accuracy Optical flow, HAOF)算法估算出各像素位置处光强流速的垂直分量和水平分量;然后使用单独的人工神经网络(ANN)对所有图像帧中所有像素位置的估计流速进行建模。训练后的模型用于预测未来图像帧中所有像素位置的强度流速度。通过使用模型预测的速度,将所有像素位置的强度映射到新的位置。利用双线性插值的概念从新的强度位置获得预测图像。通过基于Canny边缘检测的图像比较度量(CIM)和平均结构相似指数度量(MSSIM)对预测图像帧的质量进行评估。通过将预测模型应用于两个图像序列——一个是战斗机降落在海军甲板上的图像序列,另一个是火车在桥上移动的图像序列——来模拟预测模型。结果表明,该框架具有较好的清晰度和准确性。
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