The present disclosure relates to a multi-channel acoustic event detection and classification method for weak signals, operates at two stages; first stage detects events power and probability within a single channel, accumulated events in single channel triggers second stage, which is power-probability image generation and classification using the tokens of neighbouring channels.
Existing acoustic event detection systems use a voice activity detection (VAD) module to filter out noise. Binary nature of VAD module might cause either weak acoustic events get eliminated, and missing events or declaring too many alarms with lower thresholds. The application numbered CN107004409A offers a running range normalization method includes computing running estimates of the range of values of features useful for voice activity detection (VAD) and normalizing the features by mapping them to a desired range. This method only proposes voice activity detection (VAD), not multiple channel acoustic event detection/classification. Russian patent numbered RU2017103938A3 is related with a method and device that uses two feature sets for detecting only voice region without classification.
Binary event detection hampers the performance of the eventual system. Current state of the art is also not capable of detecting and classifying acoustic events using both power and signal characteristics considering the context of neighbouring channels/microphones. Classifying events using a single microphone ignores the content of the environment, hence is susceptible to more number of false alarms.
The application numbered KR1020180122171A teaches a sound event detection method using deep neural network (ladder network). In this method, acoustic features are extracted and classified with deep learning but multi-channel cases are not handled. A method of recognizing sound event in auditory scene having low signal-to-noise ratio is proposed in application no. WO2016155047A1. Its classification framework is random forest and a solution for multi-channel event detection is not referred in this application.
The article titled “Eventness: Object Detection on Spectrograms for Temporal Localization of Audio Events” discloses the concept of eventness for audio event detection, which can be thought of as an analogue to objectness from computer vision by utilizing a vision inspired CNN. Audio signals are first converted into spectrograms and a linear intensity mapping is used to separate the spectrogram into 3 distinct channels. A pre-trained vision based CNN is then used to extract feature maps from the spectrograms, which are then fed into the Faster R-CNN. This article focuses on single-channel data processing. There is no information that the events are localized spatially because of multi-channel signals and The article has neither multi-channel processing nor sensor fusion.
McLoughlin Ian et al. “Time-Frequency Feature Fusion for Noise Robust Audio Event Classification” offers a system that works on single channel data. For this purpose, a data combining two different features in the time-frequency space was used. There is no such thing as dealing with a large number of scenarios that can be experienced from a positional point of view. It aims to achieve a better performance against the use of a single feature by combining two different time-frequency features.
The U.S. Pat. No. 10,311,129B1 extends to methods, systems, and computer program products for detecting events from features derived from multiple signals, wherein a Hidden Markov Model (HMM) is used. Related patent does not form a power probability image to detect low SNR events.
The present invention offers a two level acoustic event detection framework. It merges power and probability and forms an image, which is not proposed in existing methods. Presented method analyses events for each channel independently at first level. There is a voting scheme for each channel independently. Promising locations are examined on power-probability image, where each pixel is an acoustic-pixel of a discretized acoustic continuous signal. Most innovative aspect of this invention is to convert small segment acoustic signals into phonemes (acoustic pixel), then understand the ongoing activity for several channels in power-probability image.
Proposed solution generates power and probability tokens from short durations of signal from each microphone within the array. Then power-probability tokens are concatenated into an image for multiple microphones located with aperture. This approach enables summarizing the context information in an image. Power-probability image is classified using machine learning techniques to detect and classify for certain events which is corresponding a target activity or phoneme that needed to be detected and classified, Such methodology enables the system as either keyword-spotting system (KWS) or an anomaly detector.
Proposed system operates at two stages. First stage detects events power and probability within a single channel. Accumulated events in single channel triggers second stage, which is power-probability image generation and classification using the tokens of neighbouring channels. This image is classified using machine learning to find certain type of events or anomalies. Proposed system also enables visualizing the event probability and power as an image and spot the anomaly activities within clutter.
Examining the power and probability of a channel independently creates false alarms. Most common false alarm source is the highway regions, which manifest itself as a digging activity due to bumps or microphones being close to the road. Considering several channels together enable the system adopting to the contextual changes such as vehicle passing by. This way system learns abnormal paint-strokes in power-probability image.
As given in
Proposed system uses three memory units:
Proposed system uses two networks trained offline:
Online flowchart of the system is as following:
Offline flowchart of the system is as following:
Power-probability image is a three channel input. First channel is the normalized-quantized power input. Second channel is phoneme probability. Third channel is the cross product of power and probability. (Power, Probability, Power*Probability)
The power, probability and cross product result for a microphone array spread over 51.5 km can be found in
Devised technique can be visualized as an expert trying to inspect an art-piece and detect modifications on an original painting, which deviates from the inherent scene acoustics. In
This application is the national stage entry of International Application No. PCT/TR2019/050635, filed on Jul. 30, 2019, the entire contents of which are incorporated herein by reference.
Filing Document | Filing Date | Country | Kind |
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PCT/TR2019/050635 | 7/30/2019 | WO |