2018
DOI: 10.17559/tv-20180620082101
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Application of Video Scene Semantic Recognition Technology in Smart Video

Abstract: Video behaviour recognition and semantic recognition understanding are important components of intelligent video analytics. Traditionally, human behaviour recognition has met problems of low recognition efficiencies and poor accuracies. For example, most existing behaviour recognition methods use the video frames obtained by even segmentation and fixed sampling as the input, which may lose important information between sampling intervals, fail to identify the key frames of the video segments and make use of th… Show more

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Cited by 3 publications
(2 citation statements)
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“…Hence, jitter indicates the likelihood of congestion at the end node as a result of concurrent network demand. Each packet received by the client node is acknowledged by the server node within a regular round-trip time [10]. A destination node that is overloaded, however, needs more time to process incoming packets when there is congestion, resulting in an irregular RTT and acknowledgement time.…”
Section: Rtt Jittermentioning
confidence: 99%
“…Hence, jitter indicates the likelihood of congestion at the end node as a result of concurrent network demand. Each packet received by the client node is acknowledged by the server node within a regular round-trip time [10]. A destination node that is overloaded, however, needs more time to process incoming packets when there is congestion, resulting in an irregular RTT and acknowledgement time.…”
Section: Rtt Jittermentioning
confidence: 99%
“…Considering this, there are a lot of models of objective video quality evaluation which are based on separation and testing a huge number of images which create a video sequence to estimate QoE in offline regime [17], [25]. The main aim in this particular evaluation of every image is obtaining the mean value of video quality.…”
Section: Model Descriptionmentioning
confidence: 99%