标题: | 使用麦克风阵列之强健型警报器声源辨识演算法 A Robust Alarm Sound Identification Algorithm Using Microphone Array |
作者: | 吴承谚 胡竹生 Wu,Cheng-Yan Hu,Jwu-Sheng 工学院声音与音乐创意科技硕士学位学程 |
关键字: | 麦克风阵列;罗吉斯回归;波束形成器;转移函式比值法;最小方差无失真响应;Microphone Array;Logistic regression;Beamformer;Transfer Function Ratio (TFR) method;Minimum Variance Distortionless Response (MVDR) |
公开日期: | 2017 |
摘要: | 本文提出结合麦克风阵列、适应性滤波器及声源辨识演算法的警报器侦测系统,可接收多点不同方位之警报器声源来进行辨识。近年来,物联网兴起,于居家电器装置结合网路介面进行连网功能,可达到多系统整合以便家庭远端智慧监控,在现有警报器上加装网路介面需要改装原来的设备,并且每一警报器都将增加额外的能量损耗,将会使整体成本提升。本文提出无须额外改造设备及节省成本的系统,透过声音的传递达成传输警报至监控系统的功能,用于家中多警报器之侦测,例如:门锁防盗警报、瓦斯警报、一氧化碳及烟雾警报器。 文中提出以麦克风阵列技术结合适应性空间滤波器获得去杂讯声源,对此声源频域与时域做特征撷取并建立模型,依据警报器周期、主要频率、频率分布、过零率及工作周期等特征,持续判断环境中是否警报器响起。文章最后,演算法以不同种类的稳态及非稳态噪音于不同讯噪比情况下测试,针对警报音命中率和非警报音命中率进行分析。藉由实际警报器及麦克风阵列之环境配置下进行实验模拟,利用最小无失真响应的波束形成器达到声源强化的效果;其中空间前处理所需的角度资讯,事先运用转移函式比值法求得目标声源在空间中相对转移函式做为角度资讯。 This thesis presents an alarm detection system which combines the microphone arrays, adaptive filter and sound source identification algorithms to receive alarms sound from different orientations and then identify the alarm types. In recent years, the rise of Internet of things (IoT) has added the internet connectivity to various home appliances which allows remote intelligent monitoring and control. However, the installation of network interface to existing alarm systems requires the modifications of original device and each alarm system will consume additional energy too. As a result, the overall cost to upgrade the existing system will be high and not worthwhile. Hence, this thesis proposes a system that eliminates the need for additional modifications of equipment and delivers cost savings. The proposed system has utilized the transmission of alert sound from different alarm systems into a monitoring system for detection of multi-alarm devices at home such as door alarms, gas detector alarms, carbon monoxide and smoke detector alarms. In this thesis, a method of using microphones array technology combined with adaptive spatial filter is proposed to obtain the sound source with noise removed. After that, the frequency domain and time domain of this sound source were extracted and modeled. The proposed system can constantly detect the existence of various alarms sound in the environment and identify them based on the characteristics like alarm period, main frequency, frequency distribution, zero-crossing rate and duty cycle. At last, the proposed algorithm was tested under the different kinds of steady-state noise and non-steady state noise with different signal-to-noise ratios. The final results were obtained and analyzed based on the hit rate of alarm sound and non-alarm sound. The experimental setup included the actual alarm systems and microphone arrays where the minimum variance distortionless response (MVDR) beamformer was used for sound source enhancement. The directional information between the sound source and microphones in any given space was required by the spatial preprocessing. This directional information was obtained by calculating the relative transfer function (RTF) using the transfer function ratio (TFR) method. |
URI: | http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070251902 http://hdl.handle.net/11536/142555 |
显示于类别: | Thesis |