摘要
A trainable VLSI neuroprocessor for adaptive vector quantization based upon the frequency-sensitive competitive learning algorithm has been developed for high-speed high-ratio image compression applications. Simulation results show that such an algorithm is capable of producing goodquality reconstructed image at high compression ratios of more than 20. This neural network-based vector quantization design includes a fully parallel vector quantizer and a pipelined codebook generator which obtains a time complexity O(1) for each quantization vector. A 5x5-dimentional vector quantizer prototype chip has been designed, fabricated and tested. It contains 64 inner-product neural units and an extendable winner-take-all block. This mixed-signal chip occupies a compact silicon area of 4.6 x 6.8 mm2 in a 2.0-μm scalable CMOS technology. It provides a computing capability as high as 3.33 billion connections per second. It can achieve a speedup factor of 750 compared with a SUN-3/60 for a compression ratio of 33. Real-time adaptive VQ on industrial 1,024 × 1,024 pixel images is feasible using an extended array of such neuroprocessor chips. An industrial-scale chip of 125 mm2 size to achieve 104 billion connections per second for the 1024-codevector vector quantizer can be fabricated in a 1-μm CMOS technology.
原文 | 英語 |
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主出版物標題 | Data Compression Conference 1991 |
發行者 | Institute of Electrical and Electronics Engineers Inc. |
頁面 | 342-351 |
頁數 | 10 |
ISBN(電子) | 0818692022 |
DOIs | |
出版狀態 | 已出版 - 1991 |
對外發佈 | 是 |
事件 | 1991 Data Compression Conference, DCC 1991 - Snowbird, 美國 持續時間: 08 04 1991 → 11 04 1991 |
出版系列
名字 | Data Compression Conference Proceedings |
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卷 | 1991-April |
ISSN(列印) | 1068-0314 |
Conference
Conference | 1991 Data Compression Conference, DCC 1991 |
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國家/地區 | 美國 |
城市 | Snowbird |
期間 | 08/04/91 → 11/04/91 |
文獻附註
Publisher Copyright:© 1991 IEEE.