发明授权
- 专利标题: Rapid tree-based method for vector quantization
- 专利标题(中): 用于矢量量化的快速基于树的方法
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申请号: US999354申请日: 1992-12-31
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公开(公告)号: US5734791A公开(公告)日: 1998-03-31
- 发明人: Alejandro Acero , Kai-Fu Lee , Yen-Lu Chow
- 申请人: Alejandro Acero , Kai-Fu Lee , Yen-Lu Chow
- 申请人地址: CA Cupertino
- 专利权人: Apple Computer, Inc.
- 当前专利权人: Apple Computer, Inc.
- 当前专利权人地址: CA Cupertino
- 主分类号: G10L19/02
- IPC分类号: G10L19/02 ; G10L3/02
摘要:
The branching decision for each node in a vector quantization (VQ) binary tree is made by a simple comparison of a pre-selected element of the candidate vector with a stored threshold resulting in a binary decision for reaching the next lower level. Each node has a preassigned element and threshold value. Conventional centroid distance training techniques (such as LBG and k-means) are used to establish code-book indices corresponding to a set of VQ centroids. The set of training vectors are used a second time to select a vector element and threshold value at each node that approximately splits the data evenly. After processing the training vectors through the binary tree using threshold decisions, a histogram is generated for each code-book index that represents the number of times a training vector belonging to a given index set appeared at each index. The final quantization is accomplished by processing and then selecting the nearest centroid belonging to that histogram. Accuracy comparable to that achieved by conventional binary tree VQ is realized but with almost a full magnitude increase in processing speed.
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