標題: Optimizing Fixation Prediction Using Recurrent Neural Networks for 360 degrees Video Streaming in Head-Mounted Virtual Reality
作者: Fan, Ching-Ling
Yen, Shou-Cheng
Huang, Chun-Ying
Hsu, Cheng-Hsin
資訊工程學系
Department of Computer Science
關鍵字: 360 degrees video;Virtual Reality;HMD;prediction;machine learning;RNN;tiled streaming
公開日期: 1-Mar-2020
摘要: We study the problem of predicting the viewing probability of different parts of 360. videos when streaming them to head-mounted displays. We propose a fixation prediction network based on recurrent neural network, which leverages sensor and content features. The content features are derived by computer vision (CV) algorithms, which may suffer from inferior performance due to various types of distortion caused by diverse 360. video projection models. We propose a unified approach with overlapping virtual viewports to eliminate such negative effects, andwe evaluate our proposed solution using severalCValgorithms, such as saliency detection, face detection, and object detection. We find that overlapping virtual viewports increase the performance of these existing CV algorithms that were not trained for 360. videos. We next fine-tune our fixation prediction network with diverse design options, including: 1) with or without overlapping virtual viewports, 2) with or without future content features, and 3) different feature sampling rates. We empirically choose the best fixation prediction network and use it in a 360. video streaming system. We conduct extensive trace-driven simulations with a large-scale dataset to quantify the performance of the 360. video streaming system with different fixation prediction algorithms. The results show that our proposed fixation prediction network outperforms other algorithms in several aspects, such as: 1) achieving comparable video quality (average gaps between -0.05 and 0.92 dB), 2) consuming much less bandwidth (average bandwidth reduction by up to 8Mb/s), 3) reducing the rebuffering time (on average 40 s in bandwidth-limited 4G cellular networks), and 4) running in real-time (at most 124 ms).
URI: http://dx.doi.org/10.1109/TMM.2019.2931807
http://hdl.handle.net/11536/153887
ISSN: 1520-9210
DOI: 10.1109/TMM.2019.2931807
期刊: IEEE TRANSACTIONS ON MULTIMEDIA
Volume: 22
Issue: 3
起始頁: 744
結束頁: 759
Appears in Collections:Articles