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声音量感分布与控制
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作者 许小旋 《北京电子》 2002年第1期41-42,共2页
关键词 音量感分布 控制 低音 中频 极低频段
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音乐强弱相对性辨析 被引量:3
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作者 施咏 《皖西学院学报》 2009年第4期144-146,共3页
作为物理现象,音的强弱直接由物体振动幅度的大小所决定。但是,在音乐表现中并不存在任何一种所谓绝对意义上的力度的标准,音乐中的强弱是一对充满了辩证关系,并且具有多重意义上的相对性的表现因素。音乐中风格流派的影响、人听觉上的... 作为物理现象,音的强弱直接由物体振动幅度的大小所决定。但是,在音乐表现中并不存在任何一种所谓绝对意义上的力度的标准,音乐中的强弱是一对充满了辩证关系,并且具有多重意义上的相对性的表现因素。音乐中风格流派的影响、人听觉上的差异、乐器性能上的差异,以及力度表现中的层次关系、强弱渐变的过程中无不显示出这一强弱的相对性。 展开更多
关键词 相对性 音量感 层次 响度 力度 对比幅度
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Support vector machines for emotion recognition in Chinese speech 被引量:8
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作者 王治平 赵力 邹采荣 《Journal of Southeast University(English Edition)》 EI CAS 2003年第4期307-310,共4页
Support vector machines (SVMs) are utilized for emotion recognition in Chinese speech in this paper. Both binary class discrimination and the multi class discrimination are discussed. It proves that the emotional fe... Support vector machines (SVMs) are utilized for emotion recognition in Chinese speech in this paper. Both binary class discrimination and the multi class discrimination are discussed. It proves that the emotional features construct a nonlinear problem in the input space, and SVMs based on nonlinear mapping can solve it more effectively than other linear methods. Multi class classification based on SVMs with a soft decision function is constructed to classify the four emotion situations. Compared with principal component analysis (PCA) method and modified PCA method, SVMs perform the best result in multi class discrimination by using nonlinear kernel mapping. 展开更多
关键词 speech signal emotion recognition support vector machines
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以摆位求平衡
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作者 蒙兆慧 《视听技术》 1998年第3期38-38,共1页
平衡的声音使人听感舒服惬意,要想取得这种效果,很重要的一点是在听音室内为音箱找个理想的位置。
关键词 摆位方法 音量感 音色平衡 音场 声像压缩 腰三角 听音室 听音房间 音响系统 体型大小
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Pathological Voice Classification Based on Features Dimension Opti mization 被引量:1
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作者 彭策 徐秋晶 +1 位作者 万柏坤 陈文西 《Transactions of Tianjin University》 EI CAS 2007年第6期456-461,共6页
The classification of pathological voice from healthy voice was studied based upon 27 acoustic features derived from a single sound signal of vowel /a:/. First, the feature space was transferred to reduce the data dim... The classification of pathological voice from healthy voice was studied based upon 27 acoustic features derived from a single sound signal of vowel /a:/. First, the feature space was transferred to reduce the data dimension by principle component analysis (PCA). Then the voice samples were classified according to the reduced PCA parameters by support vector machine (SVM) using radial basis function (RBF) as a kernel function. Meanwhile, by changing the ratio of opposite class samples, the accuracy under different features combinations was tested. Experimental data were provided by the voice database of Massachusetts Eye and Ear Infirmary (MEEI) in which 216 vowel /a:/ samples were collected from subjects of healthy and pathological cases, and tested with 5 fold cross-validation method. The result shows the positive rate of pathological voices was improved from 92% to 98% through the PCA method. STD, Fatr, Tasm, NHR, SEG, and PER are pathology sensitive features in illness detection. Using these sensitive features the accuracy of detection of pathological voice from healthy voice can reach 97%. 展开更多
关键词 pathological voice classification support vector machine radial basis function principle component analysis pathology sensitive features
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A robust feature extraction approach based on an auditory model for classification of speech and expressiveness 被引量:5
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作者 孙颖 V.Werner 张雪英 《Journal of Central South University》 SCIE EI CAS 2012年第2期504-510,共7页
Based on an auditory model, the zero-crossings with maximal Teager energy operator (ZCMT) feature extraction approach was described, and then applied to speech and emotion recognition. Three kinds of experiments were ... Based on an auditory model, the zero-crossings with maximal Teager energy operator (ZCMT) feature extraction approach was described, and then applied to speech and emotion recognition. Three kinds of experiments were carried out. The first kind consists of isolated word recognition experiments in neutral (non-emotional) speech. The results show that the ZCMT approach effectively improves the recognition accuracy by 3.47% in average compared with the Teager energy operator (TEO). Thus, ZCMT feature can be considered as a noise-robust feature for speech recognition. The second kind consists of mono-lingual emotion recognition experiments by using the Taiyuan University of Technology (TYUT) and the Berlin databases. As the average recognition rate of ZCMT approach is 82.19%, the results indicate that the ZCMT features can characterize speech emotions in an effective way. The third kind consists of cross-lingual experiments with three languages. As the accuracy of ZCMT approach only reduced by 1.45%, the results indicate that the ZCMT features can characterize emotions in a language independent way. 展开更多
关键词 speech recognition emotion recognition zero-crossings Teager energy operator speech database
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An Overview of the Advanced Nonintrusive Measurement Techniques in Hypersonic Flow Field
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作者 ZHAO Xuejun XIANG Xingju +1 位作者 MA Yuanhong WANG Hongwei 《Aerospace China》 2017年第4期26-32,共7页
Hypersonic flow-field measurement techniques have been studied for about 50 years. Despite truly remarkable progress with a probe or other device to measure the temperature, pressure or velocity, there are still serio... Hypersonic flow-field measurement techniques have been studied for about 50 years. Despite truly remarkable progress with a probe or other device to measure the temperature, pressure or velocity, there are still serious problems for these "intrusive" techniques. The intrusive measurement techniques introduce unexpected shock waves or flow-field structures, even make the boundary layer transition earlier and show a converse result. In recent years, nonintrusive diagnostics have been in urgent demand to give a more accurate and comprehensive flow-field for hypersonic testing. In this paper, an overview of some advanced nonintrusive measurement techniques such as embedded thermocouples for heat flux measurement, Pressure Sensitive Paint(PSP), Particle Image Velocimetry(PIV), infrared thermographs, and focusing Schlieren system are introduced. All of these techniques are nonintrusive and provide measurement of various parameters such as temperature, static pressure, dynamic pressure, flow velocity and visualization of flow structure, which gives us an exact and direct understanding of the hypersonic flow. 展开更多
关键词 hypersonic heat flux PIV PSP Schlieren
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