%0 Journal Article %T Vector Quantization Based on Self-Organizing Feature Map Neural Network
基于自组织特征映射神经网络的矢量量化 %A LU Zhe-ming %A
陆哲明 %J 中国图象图形学报 %D 2000 %I %X In recent years, many scholars have successfully applied the Kohonen s self-organizing feature map (SOFM) neural networks to vector quantization image compression encoding. The two main shortcomings of the basic SOFM method are its high computation complexity and its poor codebook quality compared to the conventional LBG algorithm. In order to improve the codebook performance, some modification is made in the weight factor adjustment of the basic SOFM algorithm in this paper. In order to reduce the computation complexity of the basic SOFM algorithm, some fast search methods are used in SOFM iterations during the search for the winning neuron. The proposed algorithm is used to generate vector quantization codebook and the generated codebooks are used for image compression encoding in this paper. Simulation shows that the reduction of computation is substantial and the codebook performance is improved. Compared to the basic SOFM algorithm, the reduction of computation is about 75%. For not only image in the training set but also the image outside the training set, the encoding quality can be improved by 0.80dB~0.90dB compared to the basic SOFM algorithm. %K Vector quantization %K Self %K organizing feature map neural network %K Image compression
矢量量化 %K 自组织特征映射神经网络 %K 图象压缩 %U http://www.alljournals.cn/get_abstract_url.aspx?pcid=5B3AB970F71A803DEACDC0559115BFCF0A068CD97DD29835&cid=8240383F08CE46C8B05036380D75B607&jid=D06194629680C940ACE75262F54B9D85&aid=4713476763C5CF33&yid=9806D0D4EAA9BED3&vid=94C357A881DFC066&iid=F3090AE9B60B7ED1&sid=5EB19D41D7A73119&eid=138D3449C4A7D4E9&journal_id=1006-8961&journal_name=中国图象图形学报&referenced_num=7&reference_num=0