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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Falling Detection Research Based on Elderly Behavior Infrared Video Image Contours Ellipse Fitting
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Falling Detection Research Based on Elderly Behavior Infrared Video Image Contours Ellipse Fitting

机译:基于老年人行为红外视频图像轮廓椭圆拟合的下降检测研究

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Throughout the world, the proportion of the elders in the total population is increasing dramatically, and home-based care has become the most important form of old-age care. Falling is the most common cause of accidents among the elders at home that poses a huge threat to their health and lives. In order to protect the privacy of the elders an accidental falling detection algorithm for the elders in the home has been proposed in this paper. First, contour-based infrared motion video images are used instead of high-definition cameras to collect the elderly behaviors to protect their privacy. Second, ellipse fitting is performed on the infrared video images of the five behaviors including standing, sitting, squatting, bending and falling. The five geometric characteristic variables of the contour-fitting ellipses including the number of ellipses, centroid positions, ellipsoidal areas, horizontal inclinations and long-short axis ratios of the images, have been extracted. Next, an LSTM model is established using the above variables as inputs for feature extraction and classification. Finally, infrared video images of different types of active behaviors of the elders aged from 50 to 70 years have been selected as IFD database for classification detection. Sixty percent of the IFD images are used as training datasets, and 40% of the IFD images are used as test datasets, and compared with the classification detection of URFD datasets which contains optical RGB HD video images of the different behaviors. The experimental results show the effectiveness of the algorithm proposed in this paper which combines the contour ellipse fitting of the infrared video images and the LSTM feature extraction. The average correct classification rate of the normal and falling down behaviors of the elders is above 95%, which is comparable to the optical RGB datasets. The precision of behavior recognition can effectively protect the privacy of the elders, and provide protection for the accidental falling detection of the elders living alone.
机译:在全世界,总人口中长老的比例急剧增加,家庭护理已成为最重要的养老护理形式。堕落是家中长老发生的最常见的事故原因,对他们的健康和生活构成了巨大的威胁。为了保护长老的隐私,在本文中提出了本文中的长老的意外下降检测算法。首先,使用基于轮廓的红外运动视频图像而不是高清摄像机来收集老年行为以保护其隐私。其次,在包括站立,坐着,蹲,弯曲和落下的五种行为的红外视频图像上执行椭圆拟合。已经提取包括椭圆,质心位置,椭圆区域,图像的水平倾斜度和图像的水平倾斜度和长轴比的轮廓拟合椭圆的五个几何特征变量。接下来,使用上述变量作为特征提取和分类的输入建立LSTM模型。最后,已选择从50到70年龄的不同类型的活动行为的红外视频图像被选为IFD数据库以进行分类检测。使用六十个IFD图像用作训练数据集,并且40%的IFD图像用作测试数据集,并与包含不同行为的光学RGB高清视频图像的URFD数据集的分类检测。实验结果表明了本文提出的算法的有效性,其结合了红外视频图像的轮廓椭圆拟合和LSTM特征提取。长老的正常和下降行为的平均正确分类率高于95%,其与光学RGB数据集相当。行为识别的精确性可以有效保护长老的隐私,并为独自生活的长老的意外下降检测提供保护。

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