基于视频挖掘的特写视频事件人脸检测

Pub Date : 2023-01-01 DOI:10.12720/jait.14.2.160-167
Amjad Rehman Khan, M. Harouni, Sepideh Sharifi, Saeed Ali Omer Bahaj, T. Saba
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引用次数: 1

摘要

-由于图像的高度复杂性,突发性动态图像中的人脸检测和识别仍然具有挑战性。为了解决这个问题,我们使用灰度共生矩阵(GLCM)将大视频转换为包含一系列图像序列信息的较小的相应部分。GLCM是与图像中相邻像素值之间的关系相关联的矩阵。该方法分为两个阶段。首先,使用直方图差分法将视频作为输入。利用图像的共现矩阵、统计方法和从视频中提取的突发镜头的边界提取特征。其次,利用Viola-Jones算法对第一步提取的突发镜头进行人脸识别。因此,在近距离拍摄的输出中,通过视频数据挖掘提取人脸。在该方法中,我们比较了三个窗口(3,5和7)的参数模型和检测每个窗口值(0.1,0.5,1.5,1.5和2)之间突然切割的阈值限制。通过考虑阈值为1的5×5窗口中突然切割的最大百分比,可以获得最高的人脸检测百分比。
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Face Detection in Close-up Shot Video Events Using Video Mining
—Face detection and recognition in abrupt dynamic images is still challenging due to high complexity of images. To tackle this issue, we employed Gray-Level Co-occurrence Matrix (GLCM) to convert large video into smaller consequential sections containing sequence information from a series of images. GLCM is a matrix associated with the relationship between the values of adjacent pixels in an image. The proposed method is composed of two stages. First, the video is taken as input using the histogram difference method. Features are extracted using co-occurrence matrix of images, statistical methods, and the border of sudden shots extracted from the video. Second, face recognition with the Viola-Jones algorithm is performed on the sudden shots extracted in the first step. Thus, the face is extracted by video data mining in output in close shots. In this method, we compared the parameter model in three windows (3, 5 and 7) and threshold limit for detecting abrupt cuts between values (0.1, 0.5, 1.5, 1.5 and 2) for each window. The highest percentage of face detection is attained by considering the maximum percentage of abrupt cuts in the 5×5 window with a threshold value of 1.
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