Existing video streaming algorithms use various estimation approaches to infer the inherently variable bandwidth in cel-lular networks, which often leads to reduced quality of expe-rience (QoE). We ask the question: “If accurate bandwidth prediction were possible in a cellular network, how much can we improve video QoE?”. Assuming we know the bandwidth for the entire video session, we show that existing stream-ing algorithms only achieve between 69%-86 % of optimal quality. Since such knowledge may be impractical, we study algorithms that know the available bandwidth for a few sec-onds into the future. We observe that prediction alone is not sufficient and can in fact lead to degraded QoE. However, when combined with rate stabilization func...
International audienceVideo streaming is a dominant contributor to the global Internet traffic. Cons...
The proliferation of 360° video content and easy availability of head-mounted devices propelled the ...
Progressive download video services, such as YouTube, are responsible for a major part ...
Today\u27s HTTP adaptive streaming applications are designed to provide high levels of Quality of Ex...
Multimedia traffic dominates today’s Internet. In particular, the most prevalent traffic carried ove...
The current 4G LTE cellular networks provide significantly higher data rate and lower network latenc...
Streaming over the wireless channel is challenging due to rapid fluctuations in available throughput...
The majority of Internet video traffic today is delivered via HTTP Adaptive Streaming (HAS). Recent ...
Multimedia consists of voice, video, and data. Sample applications include video conferencing, video...
Frequent variations in throughput make mobile networks a challenging environment for video streaming...
Progressive download video services, such as YouTube and podcasts, are responsible for a major part ...
In this study, we propose a bandwidth-aware scaling mechanism for rate adaptive video streaming. Thi...
With the increase in demand for video streaming services on the hand held mobile terminals with limi...
Video streaming in mobile environments has always been challenging due to various factors. The time-...
Tracking and maintaining satisfactory QoE for video streaming services is becoming a greater challen...
International audienceVideo streaming is a dominant contributor to the global Internet traffic. Cons...
The proliferation of 360° video content and easy availability of head-mounted devices propelled the ...
Progressive download video services, such as YouTube, are responsible for a major part ...
Today\u27s HTTP adaptive streaming applications are designed to provide high levels of Quality of Ex...
Multimedia traffic dominates today’s Internet. In particular, the most prevalent traffic carried ove...
The current 4G LTE cellular networks provide significantly higher data rate and lower network latenc...
Streaming over the wireless channel is challenging due to rapid fluctuations in available throughput...
The majority of Internet video traffic today is delivered via HTTP Adaptive Streaming (HAS). Recent ...
Multimedia consists of voice, video, and data. Sample applications include video conferencing, video...
Frequent variations in throughput make mobile networks a challenging environment for video streaming...
Progressive download video services, such as YouTube and podcasts, are responsible for a major part ...
In this study, we propose a bandwidth-aware scaling mechanism for rate adaptive video streaming. Thi...
With the increase in demand for video streaming services on the hand held mobile terminals with limi...
Video streaming in mobile environments has always been challenging due to various factors. The time-...
Tracking and maintaining satisfactory QoE for video streaming services is becoming a greater challen...
International audienceVideo streaming is a dominant contributor to the global Internet traffic. Cons...
The proliferation of 360° video content and easy availability of head-mounted devices propelled the ...
Progressive download video services, such as YouTube, are responsible for a major part ...