Acoustic modeling serves de-noising, data reconstruction, model-based testing and classification in audio processing tasks. Previous work dealt with signal parameterization of wave envelopes either by multiple Gaussian distributions or a single asymmetric Gaussian curve, which both fall short in representing super-imposed echoes sufficiently well. This study presents a three-stage Multimodal Exponentially Modified Gaussian (MEMG) model with an optional oscillating term that regards captured echoes as a superposition of univariate probability distributions in the temporal domain. With this, synthetic ultrasound signals suffering from artifacts can be fully recovered, which is backed by quantitative assessment. Real data experimentation is carried out to demonstrate the classification capability of the acquired features with object reflections being detected at different points in time. The code is available at https://github.com/hahnec/multimodal_emg.
翻译:声学模型是音频处理任务中的脱钩、数据重建、基于模型的测试和分类。以前的工作是通过多种高山分布或单一的不对称高斯曲线对波形信封进行信号参数化,两者都不足以充分代表超强回声。本研究提出了一个三阶段的多式热量变异(MEMG)模型,可选用振动术语,将所捕回的回声视为时间域内单向概率分布的叠加。在此情况下,合成超声波信封受创的信号可以完全恢复,并得到定量评估的支持。进行真正的数据实验,以展示获得的物体的分类能力,在不同时间点探测到物体反射。该代码可在https://github.com/hanec/mulmodal_emg查阅。