A New Face Region Recovery Algorithm based on Bicubic Interpolation

Q3 Decision Sciences
Muntadher H. Al-Hadaad, Rasha Thabit, Khamis A. Zidan
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引用次数: 0

Abstract

Recently, researchers focused on face image manipulation detection and localization techniques because of their importance in image security applications. The previous research has not highlighted the recovery of the face region after manipulation detection. This paper presents a new face region recovery algorithm (FRRA) to be included in the face image manipulation detection algorithms (FIMD). The proposed FRRA consists of two main algorithms: face data generation algorithm and face region restoration algorithm. Both algorithms start by detecting the face region using Multi-task Cascaded Neural Network followed by a face window selection process. In the face data generation algorithm, the recovery information is generated from the shirked face window using bicubic interpolation technique. In the face region restoration algorithm, the face region zoomed using bicubic interpolation technique. The proposed FRRA has been tested and compared with previous recovery methods for different color face images, and the results proved that the FRRA could recover the face region with better visual quality at the same data length compared to previous methods. The main contributions of this research are a) the suggestion of including a face region recovery algorithm to FIMD, b) the study of previous recovery data generation algorithms for color face images, and c) introducing a new algorithm for generating the recovery data based on bicubic interpolation. In the future, the proposed algorithm can be included in the recent FIMD algorithms to recover the face region, which can be very useful in practical applications, especially those used in data forensics systems.
一种基于双三次插值的人脸区域恢复算法
由于人脸图像处理检测和定位技术在图像安全应用中的重要性,近年来备受关注。以往的研究并没有强调操作检测后面部区域的恢复。提出了一种新的人脸区域恢复算法(FRRA),用于人脸图像处理检测算法(FIMD)。该算法主要包括两个算法:人脸数据生成算法和人脸区域恢复算法。这两种算法首先使用多任务级联神经网络检测人脸区域,然后进行人脸窗口选择过程。在人脸数据生成算法中,利用双三次插值技术从被剔除的人脸窗口生成恢复信息。在人脸区域恢复算法中,采用双三次插值技术对人脸区域进行缩放。对所提出的FRRA算法进行了测试,并与已有的不同颜色人脸图像的恢复方法进行了比较,结果表明,在相同的数据长度下,FRRA算法能以更好的视觉质量恢复人脸区域。本研究的主要贡献有:a)提出了在FIMD中加入人脸区域恢复算法;b)研究了以往彩色人脸图像恢复数据生成算法;c)提出了一种基于双三次插值的恢复数据生成新算法。在未来,所提出的算法可以包含在最近的FIMD算法中,以恢复人脸区域,这在实际应用中是非常有用的,特别是在数据取证系统中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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