Waqas Ahmad
Forskningsområden
Light Field Compression
Publikationer
Artiklar i tidskrifter
Hassan, A. , Ghafoor, M. , Tariq, S. , Zia, T.
&
Ahmad, W. (2019). High Efficiency Video Coding (HEVC)–Based Surgical Telementoring System Using Shallow Convolutional Neural Network. Journal of digital imaging,
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Ghafoor, M. , Tariq, S. A. , Abu Bakr, M. , Jibran, . , Ahmad, W.
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Zia, T. (2019). Perceptually Lossless Surgical Telementoring System Based on Non-Parametric Segmentation. Journal of Medical Imaging and Health Informatics, vol. 9: 3, ss. 464-473.
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Konferensbidrag
Ahmad, W. , Sjöström, M.
&
Olsson, R. (2018). Compression scheme for sparsely sampled light field data based on pseudo multi-view sequences.
I
OPTICS, PHOTONICS, AND DIGITAL TECHNOLOGIES FOR IMAGING APPLICATIONS V Proceedings of SPIE - The International Society for Optical Engineering. (Proceedings of SPIE)
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Ahmad, W. , Palmieri, L. , Koch, R.
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Sjöström, M. (2018). Matching Light Field Datasets From Plenoptic Cameras 1.0 And 2.0.
I
Proceedings of the 2018 3DTV Conference.
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Ahmad, W. , Vagharshakyan, S. , Sjöström, M. , Gotchev, A. , Bregovic, R.
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Olsson, R. (2018). Shearlet Transform Based Prediction Scheme for Light Field Compression.
Paper presented at the Data Compression Conference (DCC 2018),Snowbird, Utah, US, March 27 - March 30, 2018
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Ahmad, W. , Olsson, R.
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Sjöström, M. (2018). Towards a generic compression solution for densely and sparsely sampled light field data.
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Proceedings of 25TH IEEE International Conference On Image Processing.. S. 654--658.
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Ahmad, W. , Olsson, R.
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Sjöström, M. (2017). Interpreting Plenoptic Images as Multi-View Sequences for Improved Compression.
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ICIP 2017.. S. 4557--4561.
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Dataset
Ahmad, W. , Palmieri, L. , Koch, R.
&
Sjöström, M. (2018). The Plenoptic Dataset.
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Ahmad, W. , Olsson, R.
&
Sjöström, M. (2017). Interpreting Plenoptic Images as Multi-View Sequences for Improved Compression.
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Övrigt
Ahmad, W. (2019). Computationally Efficient Light Field Image Compression using a Multiview HEVC Framework.