Litcius/Paper detail

MFCC and CNN-Based Sound Classification Method for Detection of Forensic Cases in Smart Cities

Enes Kurtulan, Orhan Yaman, Jamshaid Iqbal Janjua, Nadeem Sarwar

202521 citationsDOI

Abstract

At present, security surveillance systems relying primarily on visuals may have gaps relating to actual security breaches. Hence, active responses to a variety of security risks are provided in an unprecedented manner by utilizing an anomaly detection system based on sound. Augmented sound input to surveillance cameras will be of utmost importance for providing timely assistance in cases of emergencies. In this project, the sound classes include notable or anomalous sound events like gunshots, glass shattering, brake sounds, and human conversation in a bustle that are integrated to work in tandem with security cameras. By recognizing not only sounds that represent security risks but also normal noise of a crowd, the system is expected to use deep learning and sound recognition methods to effectively reduce the false alarm rates and improve accuracy. This method encourages the creation of multifunctional camera devices that are cost and time effective.

Topics & Concepts

Computer scienceSound (geography)Mel-frequency cepstrumALARMNoise (video)Variety (cybernetics)Anomaly detectionConversationComputer securityTimbreArtificial intelligenceFalse alarmWork (physics)Global Positioning SystemField (mathematics)Constant false alarm rateIntrusion detection systemSound recording and reproductionComputer visionEngineeringAsset (computer security)Feature extractionSpeech recognitionSecurity systemHuman–computer interactionDigital Media Forensic DetectionMusic and Audio ProcessingAnomaly Detection Techniques and Applications
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