2019
DOI: 10.1007/s11554-019-00936-0
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Fast CU partition-based machine learning approach for reducing HEVC complexity

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Cited by 42 publications
(42 citation statements)
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“…HEVC complexity", is co-authored by Bouaafia et al [19]. In this paper, two machine learning-based fast CU partition methods for inter-mode HEVC are proposed, in order to optimize the complexity allocation at CU level.…”
Section: Other Emerging Security Issuesmentioning
confidence: 99%
“…HEVC complexity", is co-authored by Bouaafia et al [19]. In this paper, two machine learning-based fast CU partition methods for inter-mode HEVC are proposed, in order to optimize the complexity allocation at CU level.…”
Section: Other Emerging Security Issuesmentioning
confidence: 99%
“…A large-scale database for CU partition of the inter-mode HEVC was established, to train the proposed model, as shown in [12]. However, to construct the database, we selected 114 video sequences with various resolutions (from 352 × 240 to 2560 × 1600) [15,16].…”
Section: Database For Inter-modementioning
confidence: 99%
“…The proposed LSTM network learns the long and short-term dependencies of the CU partition across frames. In our previous proposed method [12], all parameters of Deep CNN are trained over the residual CTU and the ground-truth splitting of the CTUs, then the extracted features (F C 1−l ) 3 l=1 of Deep CNN are the input of LSTM network at frame t. These features (F C 1−l ) 3 l=1 are extracted at the first fully connected layer of Deep CNN [12]. The proposed algorithm that combines CNN and LSTM is shown in Fig.…”
Section: Cnn-lstm Networkmentioning
confidence: 99%
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