基于补丁分析、陪审团投票和组合融合的极限学习机检测接缝雕刻图像

Detecting Seam-Carved Image by Extreme Learning Machines Using Patch Analysis Method, Jury Voting, and Combinatorial Fusion

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2018
被引 7
ABS 3

中文导读

提出一种基于补丁的Sobel算子方法,结合极限学习机和陪审团投票,用于检测接缝雕刻图像,在10-50%接缝雕刻和插入图像上分别达到70.60-98.80%和95.58-99.36%的准确率,且训练时间仅为支持向量机的1.2%。

Abstract

Seam carving is a content-aware image processing approach that has been successfully applied to resizing or removing objects from digital images. Seam-carved images are hard to identify from the original image, making this detection method an important and attractive research topic. Existing methods are based on steganography attacks or statistical features, and their trained and tested models are all constructed using support vector machines (SVMs). The trained models of these methods take a long time to build from a limited number of images. This paper presents a new patch-based sobel operator (PSO) method using SVM and extreme learning machines (ELMs) based on the patch analysis method with square-based features. The ELM adopts five types of neurons to obtain five prediction results, which are then combined using the jury voting scheme in order to improve the accuracy. In addition, combinatorial fusion is first used to choose two of five prediction results according to the diversity rank/score graph, and these two results are then combined to make the final decision. The PSO method in the ELM with jury voting and combinatorial fusion achieves accuracies of 70.60-98.80% and 95.58-99.36% for 10-50% seam-carved and seam-insertion images, respectively. Additionally, for the PSO method, the ELM required only 1.2% of the training time required by the SVM. In conclusion, the PSO method in the ELM is useful for constructing trained models from a large number of images.

图像处理机器学习模式识别数字图像取证