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A Survey on Learning End-to-end Lossy Image Compression
PhD Qualifying Examination Title: "A Survey on Learning End-to-end Lossy Image Compression" by Mr. Ka Leong CHENG Abstract: Lossy image compression has been a popular and fundamental technique for computer vision and image processing since the digital information era. Many traditional image compression codec (e.g., JPEG, JPEG2000, and BPG) are widely and commonly used in practical applications. Recently, researchers tend to develop deep-learning based algorithms for lossy image compression due to their superiority of compression rates compared to the classical ones. Some methods focus on how to build a better encoding or decoding transformation between the source images and the latent codes; some pay special attention to develop a better entropy model to estimate the latent code distribution more effectively and accurately. This survey presents a comprehensive review of learned lossy image compression methods. We first give the historical background of lossy image compression and formulate the image compression problem using the fundamental rate-distortion theory in data compression. Next, we introduce several important contributions in recent research progresses. We then summarize the current state-of-the-art approaches. After that, we further mention some common training and evaluation strategies plus a popular evaluation platform for image compression. This survey ends with a final conclusion. Date: Friday, 22 July 2022 Time: 10:00am - 12:00noon Zoom Meeting: https://hkust.zoom.us/j/93227315905?pwd=RG9ZaGE1TXJGUThtaUlpVXk2dmZvdz09 Committee Members: Dr. Qifeng Chen (Supervisor) Dr. Hao Chen (Chairperson) Prof. Raymond Wong Dr. Dan Xu **** ALL are Welcome ****