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Lorenzo Ciccarelli received the Laurea degree in electronic engineering and telecommunication from the Università Politecnica delle Marche, Italy, in 1998. He received a final master’s degree thesis on video coding and in particular working on algorithm optimization for H.263+ video codecs. From 1999 to 2006, he has been working on several aspects of video compression algorithm design and implementation participating and leading projects focused on developing codecs on different VLIW architecture mainly used for videoconference terminal and multiconference unit. In 2006, he moved to U.K. joining Ericsson SATTV (former Tandberg TV) Research and Development Department, where he had the opportunity to deepen his knowledge of the TV broadcasting side of the video coding gaining expertise in rate control and statmuxing while porting video compression algorithm on FPGAs. Between 2008 and 2014, he has been involved several projects to design software test models used to design, test and improve different algorithms based on MPEG2, AVC, and HEVC for large broadcasting systems based on multiple FPGA, DSPs, and CPUs. Between 2014 and 2016, he was leading the design of one of the first hardware implementation of a HEVC full UHD encoder based on hybrid x86 and FPGA architecture to then join BBC video coding RD, where he spent two years in improving internal video encoding testing platform (Turing Encoder) and working on different European funded projects. In 2018, he joined V-Nova Ltd., with the title of a Principal Research Engineer. During the last two years, he has been involved in the algorithm design and standardization process for MPEG5-Part 2 LCEVC.
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Mile-High Video Conference (MHV)pp.25-31, (2022)
Simone Ferrara,Lorenzo Ciccarelli,Amaya Jiménez Moreno, Shiruo Zhao, Yetish Joshi,Guido Meardi,Stefano Battista
IEEE MultiMediano. 4 (2022): 111-122
Frontiers in Signal Processing (2022)
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