Soft computing based audio signal analysis for accident prediction

H. Valiveti, B. Santhosh Kumar, Lakshmi Chaitanya Duggineni, Swetha Namburu, Swaraja Kuraparthi
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引用次数: 3

Abstract

Purpose Road accidents, an inadvertent mishap can be detected automatically and alerts sent instantly with the collaboration of image processing techniques and on-road video surveillance systems. However, to rely exclusively on visual information especially under adverse conditions like night times, dark areas and unfavourable weather conditions such as snowfall, rain, and fog which result in faint visibility lead to incertitude. The main goal of the proposed work is certainty of accident occurrence. Design/methodology/approach The authors of this work propose a method for detecting road accidents by analyzing audio signals to identify hazardous situations such as tire skidding and car crashes. The motive of this project is to build a simple and complete audio event detection system using signal feature extraction methods to improve its detection accuracy. The experimental analysis is carried out on a publicly available real time data-set consisting of audio samples like car crashes and tire skidding. The Temporal features of the recorded audio signal like Energy Volume Zero Crossing Rate 28ZCR2529 and the Spectral features like Spectral Centroid Spectral Spread Spectral Roll of factor Spectral Flux the Psychoacoustic features Energy Sub Bands ratio and Gammatonegram are computed. The extracted features are pre-processed and trained and tested using Support Vector Machine (SVM) and K-nearest neighborhood (KNN) classification algorithms for exact prediction of the accident occurrence for various SNR ranges. The combination of Gammatonegram with Temporal and Spectral features of the validates to be superior compared to the existing detection techniques. Findings Temporal, Spectral, Psychoacoustic features, gammetonegram of the recorded audio signal are extracted. A High level vector is generated based on centroid and the extracted features are classified with the help of machine learning algorithms like SVM, KNN and DT. The audio samples collected have varied SNR ranges and the accuracy of the classification algorithms is thoroughly tested. Practical implications Denoising of the audio samples for perfect feature extraction was a tedious chore. Originality/value The existing literature cites extraction of Temporal and Spectral features and then the application of classification algorithms. For perfect classification, the authors have chosen to construct a high level vector from all the four extracted Temporal, Spectral, Psycho acoustic and Gammetonegram features. The classification algorithms are employed on samples collected at varied SNR ranges.
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基于软计算的音频信号分析在事故预测中的应用
目的:在事故中,通过图像处理技术和道路视频监控系统的协作,可以自动检测到无意的事故,并立即发送警报。然而,完全依赖视觉信息,特别是在不利的条件下,如夜间,黑暗地区和不利的天气条件,如降雪,下雨和雾,导致模糊的能见度,导致不确定性。所建议的工作的主要目标是事故发生的确定性。设计/方法/方法这项工作的作者提出了一种通过分析音频信号来识别危险情况(如轮胎打滑和汽车碰撞)来检测道路事故的方法。本课题的目的是利用信号特征提取方法构建一个简单完整的音频事件检测系统,以提高其检测精度。实验分析是在一个公开可用的实时数据集上进行的,该数据集由汽车碰撞和轮胎打滑等音频样本组成。计算了所录音频信号的能量体积过零率28ZCR2529的时间特征、谱质心、谱通量因子的扩频、谱滚、心理声学特征、能量子带比和伽玛图等谱特征。对提取的特征进行预处理,并使用支持向量机(SVM)和k近邻(KNN)分类算法进行训练和测试,以准确预测不同信噪比范围内的事故发生。与现有的检测技术相比,伽玛图与时间和光谱特征的结合验证了其优越性。提取录音信号的波谱特征、谱特征、心理声学特征、伽马谱图。基于质心生成高阶向量,并利用SVM、KNN、DT等机器学习算法对提取的特征进行分类。所收集的音频样本具有不同的信噪比范围,并且对分类算法的准确性进行了全面测试。对音频样本进行去噪以获得完美的特征提取是一项繁琐的工作。原创性/价值现有文献引用提取时间和光谱特征,然后应用分类算法。为了实现完美的分类,作者选择从所有提取的时间、光谱、心理声学和伽玛图四个特征中构建一个高级向量。对不同信噪比范围下采集的样本进行分类。
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