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Silhouette based human fall detection using multimodal classifiers for content based video retrieval systems

机译:使用多模式分类器的基于轮廓的人体跌倒检测,用于基于内容的视频检索系统

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Automatic human fall detections are proving the need of time in emergency situations for elderly persons falling on the floor injuring them, sometimes with bone fracture or more severely at times being alone while performing their daily activities. Recent advancement in image processing and therein activity identification is seeing rising trend of research. Present paper aims at putting forward a fall detection system which uses human silhouettes, as processed from depth cue based on camera footages, to extract curvature scale space (CSS) features. Human actions thus finally rendered into CSS are classified with the help of standard machine learning classifier techniques such as support vector machine (SVM) and extreme learning machine (ELM). Moreover, the paper distinctively puts forward the benefit of augmented ELM classifier with help of sparse representation for image frame classification (SRC) technique. The system had been tested with standard dataset as established in literature for human action classification. The results presented in form of confusion matrix comprising of detecting semantic activities like walking, idle sitting, standing and falling demonstrate that the developed system has an edge in terms of higher accuracy compared to similar state of the art methods as reported in literature.
机译:自动的人体跌倒检测功能证明,在紧急情况下,摔倒在地板上的老年人可能会受伤,有时甚至是骨折,有时甚至是独自一人在执行日常活动时更为严重。图像处理及其活动识别的最新进展是研究的趋势。本文旨在提出一种跌倒检测系统,该系统使用人体轮廓(从基于摄像机镜头的深度提示中进行处理)提取曲率标度空间(CSS)特征。最终通过标准的机器学习分类器技术(例如支持向量机(SVM)和极限学习机(ELM))将最终呈现为CSS的人类行为进行分类。此外,本文还特别提出了利用稀疏表示进行图像帧分类(SRC)技术的增强ELM分类器的好处。该系统已经用标准数据集进行了测试,该数据集已建立在文献中,用于人类动作分类。以混淆矩阵的形式表示的结果包括检测语义活动,例如步行,闲坐,站立和跌倒,这表明与文献报道的类似技术相比,该开发的系统在更高的准确性方面具有优势。

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