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Comparison of regression functions in a shallow convolutional neural network for natural image sharpness assessment

机译:自然图像清晰度评估浅卷积神经网络中回归函数的比较

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Our previous study proposed a shallow convolutional neural network (CNN) to quantify the sharpness of natural images. The network utilized a multilayer perceptron (MLP) as its regression function in the full-connection layer. In this paper, we make use of a polynomial mapping (the logistic map, LM) as the regression function in the natural image sharpness assessment (NISA). First, the coefficient of logistic map is experimentally determined based on the database of LIVE-II. Then, the prediction performance is evaluated on Gaussian blurred images from CSIQ and TID2013. After that, three regression functions, LM, BCF (the basic cubical function) and MLP, are evaluated with Pearson linear correlation coefficient (PLCC) and Spearman rank-order correlation coefficient (SROCC). In addition, eleven state-of-the-art NISA models are compared. Based on the same shallow CNN architecture, experimental results indicate that MLP achieves the best performance, followed by BCF and LM. Furthermore, its performance is rival to or better than other NISA models. Conclusively, in comparison to LM and BCF, MLP is relatively better as a regression function for automatic network optimization and numerical regression. Meanwhile, it achieves the state-of-the-art performance in NISA task.
机译:我们以前的研究提出了一种浅卷积神经网络(CNN),以量化自然图像的清晰度。该网络利用多层的Perceptron(MLP)作为其在全连接层中的回归函数。在本文中,我们利用多项式映射(物流地图,LM)作为自然图像清晰度评估(NISA)中的回归函数。首先,基于Live-II的数据库实验确定逻辑图系数。然后,从CSIQ和TID2013对高斯模糊图像评估预测性能。此后,三个回归函数,LM,BCF(基本立方体功能)和MLP,与皮尔森评价线性相关系数(PLCC)和斯皮尔曼等级顺序相关系数(SROCC)。此外,比较了11个最先进的NISA模型。基于相同的浅CNN架构,实验结果表明,MLP实现了最佳性能,其次是BCF和LM。此外,它的性能与其他NISA模型相媲美或更好。结论与LM和BCF相比,MLP相对较好地作为自动网络优化和数值回归的回归函数。同时,它在NISA任务中实现了最先进的性能。

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