模式识别与人工智能
模式識彆與人工智能
모식식별여인공지능
Moshi Shibie yu Rengong Zhineng
2014年
7期
577-583
,共7页
杨淑莹%刘旭鹏%陶冲%刘婷婷
楊淑瑩%劉旭鵬%陶遲%劉婷婷
양숙형%류욱붕%도충%류정정
猫群优化算法%克隆扩增%码书设计%语音识别
貓群優化算法%剋隆擴增%碼書設計%語音識彆
묘군우화산법%극륭확증%마서설계%어음식별
Cat Swarm Optimization Algorithm%Clonal Expansion%Codebook Design%Speech Recognition
在矢量量化的码书设计过程中,针对传统的 LBG算法对初始码书选取的依赖性及易陷入局部最优的缺陷,提出基于免疫猫群优化算法的矢量量化码书设计。将整个种群分为搜索组和跟踪组,运用克隆扩增算子在搜寻组中进行局部搜索,根据适应度值大小调节变异个体数目,保持解的多样性。运用动态疫苗提取与接种算子使跟踪组个体基因与疫苗进行交叉变异,向最优解靠拢,防止无监督交叉变异可能引起的退化现象。通过浓度平衡算子和选择算子更新子代种群,防止种群“早熟”。将训练出全局最优码书输入到HMM模型进行训练和识别,实验结果表明,基于免疫猫群优化算法的矢量量化码书设计不依赖于初始码书选取,鲁棒性强且降低语音识别误差率。
在矢量量化的碼書設計過程中,針對傳統的 LBG算法對初始碼書選取的依賴性及易陷入跼部最優的缺陷,提齣基于免疫貓群優化算法的矢量量化碼書設計。將整箇種群分為搜索組和跟蹤組,運用剋隆擴增算子在搜尋組中進行跼部搜索,根據適應度值大小調節變異箇體數目,保持解的多樣性。運用動態疫苗提取與接種算子使跟蹤組箇體基因與疫苗進行交扠變異,嚮最優解靠攏,防止無鑑督交扠變異可能引起的退化現象。通過濃度平衡算子和選擇算子更新子代種群,防止種群“早熟”。將訓練齣全跼最優碼書輸入到HMM模型進行訓練和識彆,實驗結果錶明,基于免疫貓群優化算法的矢量量化碼書設計不依賴于初始碼書選取,魯棒性彊且降低語音識彆誤差率。
재시량양화적마서설계과정중,침대전통적 LBG산법대초시마서선취적의뢰성급역함입국부최우적결함,제출기우면역묘군우화산법적시량양화마서설계。장정개충군분위수색조화근종조,운용극륭확증산자재수심조중진행국부수색,근거괄응도치대소조절변이개체수목,보지해적다양성。운용동태역묘제취여접충산자사근종조개체기인여역묘진행교차변이,향최우해고롱,방지무감독교차변이가능인기적퇴화현상。통과농도평형산자화선택산자경신자대충군,방지충군“조숙”。장훈련출전국최우마서수입도HMM모형진행훈련화식별,실험결과표명,기우면역묘군우화산법적시량양화마서설계불의뢰우초시마서선취,로봉성강차강저어음식별오차솔。
In the process of codebook design, traditional LBG algorithm is often used for vector quantization which depends on the initial codebook selection and easily falls into local optimum. A vector quantization codebook design method based on immune cat swarm optimization algorithm ( ICSO) is proposed to solve the problems. The population is divided into searching group and tracking group. Clonal expansion operator is used for local search in the searching group, and the number of mutation individual is adjusted according to the fitness value. Moreover, dynamic vaccine extraction and vaccination operator are used for global search in the tracking group. The crossover and mutation between individual gene and vaccine make the result close to the optimal solution, and the descendant population is updated through the balance of concentration equilibrium operator and selection operator. Finally, the optimal codebook is obtained from the training vectors by the proposed algorithm and is inputted to the HMM model for training and recognition. The simulation results show that the proposed algorithm does not depend on the selection of initial codebook, has strong robustness and reduces the speech recognition error rate.