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首页> 外文期刊>Journal of visual communication & image representation >Supervised dictionary learning for blind image quality assessment using quality-constraint sparse coding
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Supervised dictionary learning for blind image quality assessment using quality-constraint sparse coding

机译:使用质量约束的稀疏编码进行盲目图像质量评估的监督词典学习

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摘要

Blind image quality assessment (BIQA) involves predicting the perceptual quality of distorted images without using their corresponding reference images as benchmark. Especially, it is desirable and meaningful to design effective opinion-free BIQA (OF-BIQA) model to predict image quality without depending on human subjective score. Toward this end, we propose a supervised dictionary learning framework for OF-BIQA using quality-constraint sparse coding. The prominent advantage of the proposed model is that "ground truth" quality scores derived from existing full-reference IQA (FR-IQA) metrics are incorporated into the traditional dictionary learning framework so that a quality-aware sparse model can be learnt. Since the goal of BIQA is to predict the quality score, the introduction of quality information into dictionary learning can be regard as a supervised dictionary learning framework. In the detailed implementation, a quality-aware regularization term is added to the traditional dictionary learning formulation, such that a feature-aware dictionary and a quality-aware dictionary can be learned jointly. Especially, these two dictionaries share the same sparse coefficients, so that the reconstruction errors from the image feature vectors and quality score vectors are both minimized. Once the feature-aware and quality-aware dictionaries are jointly learned, given a testing sample, we first abstract its feature vector and then compute the corresponding sparse coefficients w.r.t. the learnt feature-aware dictionary, finally its quality score can be directly reconstructed based on the learnt quality-aware dictionary and the estimated sparse coefficients w.r.t. the learnt feature-aware dictionary. The reconstructed quality score is expected to well approximate to the "ground truth" quality score. Thorough validation experiments on three publicly available IQA benchmark databases demonstrate the promising performance of the proposed OF-BIQA model both on the prediction accuracy and generalization capability. (C) 2015 Elsevier Inc. All rights reserved.
机译:盲图质量评估(BIQA)涉及预测失真图像的感知质量,而无需使用其相应的参考图像作为基准。特别地,设计有效的无意见BIQA(OF-BIQA)模型以预测图像质量而不依赖于人的主观评分是合乎需要和有意义的。为此,我们提出了一种使用质量约束的稀疏编码的OF-BIQA监督字典学习框架。所提出的模型的显着优点是,从现有的全参考IQA(FR-IQA)度量中得出的“基本事实”质量得分被纳入了传统的字典学习框架,因此可以学习质量意识稀疏的模型。由于BIQA的目标是预测质量得分,因此将质量信息引入词典学习中可以看作是有监督的词典学习框架。在详细实现中,将质量意识正则化术语添加到传统词典学习公式中,从而可以共同学习特征意识词典和质量意识词典。特别地,这两个字典共享相同的稀疏系数,从而使得来自图像特征向量和质量得分向量的重构误差均最小化。一旦共同学习了特征感知和质量感知的字典,给定一个测试样本,我们首先提取其特征向量,然后计算相应的稀疏系数w.r.t。学习的特征感知字典,最后可以根据学习的质量感知字典和估计的稀疏系数w.r.t直接重建其质量分数。学习的功能感知字典。预期重建的质量得分将非常接近“基本事实”质量得分。在三个公开可用的IQA基准数据库上进行的全面验证实验证明,所提出的OF-BIQA模型在预测准确性和泛化能力方面均具有令人鼓舞的性能。 (C)2015 Elsevier Inc.保留所有权利。

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