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Hyperspectral remote sensing IQA via learning multiple kernels from mid-level features

Published: 01 April 2020 Publication History

Abstract

Hyperspectral image quality assessment (HIQA) is an indispensable technique in both academic and industry domain However, HIQA is still a challenging task since those fine-grained and quality-aware visual details are difficult to be captured. Compared with the conventional low-level features, mid-level features usually contain more semantic and quality clues and exhibit higher discriminant ability. Thus, we aim to leverage the mid-level features for HIQA. More specifically, three-scale superpixel mosaics are generated from the input image pre-processed by PCA. Each superpixel scale corresponds to various homogeneousobject parts. Subsequently, three mid-level visual features (fisher vector, combined mean features, reconstructed image matrix) as well as deep features of hyperspectral images are calculated with three-scale superpixel images to constitute multiple kernels. Afterwards, we integrate these kernels into a multimodal one, which is further integrated into a feature vector by row-wise stacking. The image quality evaluation can be calculated based on the designed similarity metric. Comprehensive experiments have demonstrated the effectiveness of our proposed HIQA algorithm.

Highlights

The designed mid-level features can better represent attributes of hyperspectral images.
The designed framework can integrate multiple scale features of hyperspectral images.
Comprehensive experiments have demonstrated the effectiveness of our proposed HIQA algorithm.

References

[1]
Larson E.C., Chandler D.M., Unveiling relationships between regions of interest and image fidelity metrics, Proc. SPIE Vis. Commun. Image Process, vol. 6822, 2008, pp. 6822A1–16.
[2]
U. Engelke, V.X. Nguyen, H.-J. Zepernick, Regional attention to structural degradations for perceptual image quality metric design, in: Proc. IEEE Int. Conf. Acoust., Speech, Signal Process., Mar.–Apr. 2008, 2008, pp. 869–872.
[3]
J. Chen, Y. Zhang, L. Liang, S. Ma, R. Wang, W. Gao, A no-reference blocking artifacts metric using selective gradient and plainness measures, in: Proc. Pacific Rim Conf. Multimedia, Adv. Multimedia Inf. Process., Nov. 2008, pp. 894–89.
[4]
Wang Z., Lu L., Bovik A.C., Video quality assessment based on structural distortion measurement, Signal Process., Image Commun. 19 (2004) 121–132. Special Issue on Objective Video Quality Metrics.
[5]
Perceptual criteria for image quality evaluation, in: Pappas T.N., Safranek R.J., Chen J., Bovik A. (Eds.), Handbook of Image and Video Proc, second ed., Academic, New York, 2005.
[6]
K. He, X. Zhang, S. Ren, J. Sun, Deep residual learning for image recognition, in: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2016, pp. 770–778.
[7]
M. Rastegari, A. Farhadi, D. Forsyth, Attribute discovery via predictable discriminative binary codes, in: Proc. of ECCV, 2012.
[8]
L.J. Li*, H. Su*, Y. Lim, L. Fei-Fei, Objects as attributes for scene classification, in: Proc. of ECCV, 2010.
[9]
N. Quadrianto, V. Sharmanska, D. Knowles, Z. Ghahramani, The supervised IBP: Neighbourhood preserving infinite latent feature models, in: Proc. of UAI, 2013.
[10]
J. Feng, S. Jegelka, S. Yan, T. Darrell, Learning scalable discriminative dictionary with sample relatedness, in: Proc. of CVPR, 2014.
[11]
He J., Hu J.F., Lu X., Zheng W.S., Multi-task mid-level feature learning for micro-expression recognition, Pattern Recognit. 66 (2017) 44–52.
[12]
Xu W., Miao Z., Tian Y., A novel mid-level distinctive feature learning for action recognition via diffusion map, Neurocomputing (2016) S0925231216309535.
[13]
Zhang L., Zhang L., Mou X., Zhang D., A comprehensive evaluation of full reference image quality assessment algorithms, in: 2012 19th IEEE International Conference on Image Processing, IEEE, 2013.
[14]
Bosse S., Maniry D., Müller Klaus-Robert, Wiegand T., Samek W., Deep neural networks for no-reference and full-reference image quality assessment, IEEE Trans. Image Process. PP (99) (2016) 1.
[15]
Sun W., Liao Q., Xue J.H., Zhou F., Spsim: a superpixel-based similarity index for full-reference image quality assessment, IEEE Trans. Image Process. PP (99) (2018) 1.
[16]
Di Claudio E.D., Jacovitti G., A detail based method for linear full reference image quality prediction, IEEE Trans. Image Process. (2017).
[17]
Rehman A., Wang Z., Reduced-reference image quality assessment by structural similarity estimation, IEEE Trans. Image Process. 21 (8) (2012) 3378–3389.
[18]
Zhou W., Yu L., Qiu W., Zhou Y., Wu M., Local gradient patterns (LGP): an effective local-statistical-feature extraction scheme for no-reference image quality assessment, Inform. Sci. 397–398 (2017) 1–14.
[19]
Smith L.I., A tutorial on principal components analysis, Inf. Fusion 51 (3) (2002) 52.
[20]
Liu M.Y., Tuzel O., Ramalingam S., Chellappa R., Entropy rate superpixel segmentation, in: CVPR 2011, Vol. 32, IEEE, 2011, pp. 2097–2104.
[21]
Sánchez Jorge, Perronnin Florent, et al., Image classification with the fisher vector: theory and practice, Int. J. Comput. Vis. 105 (3) (2013) 222–245.
[22]
Perronnin F., Dance C., Fisher kernels on visual vocabularies for image categorization, in: 2007 IEEE Conference on Computer Vision and Pattern Recognition, IEEE Computer Society, 2007.
[23]
Tommi Jaakkola D.H., Exploiting generative models in discriminative classifiers, Adv. Neural Inf. Process. Syst. 11 (11) (1998) 487–493.
[24]
Wang Z., Bovik A.C., Sheikh H.R., Simoncelli E.P., Image quality assessment: From error visibility to structural similarity, IEEE Trans. Image Process. 13 (2004) 600–612.
[25]
Zhang L., Zhang L., Mou X., Zhang D., FSIM: a feature similarity index for image quality assessment, IEEE Trans. Image Process. 20 (8) (2011) 2378.
[26]
Macenka S.A., Chrisp M.P., Airborne visible/infrared imaging spectrometer (AVIRIS) spectrometer design and performance, in: Society of Photo-Optical Instrumentation Engineers, SPIE, Conference Series, Society of Photo-optical Instrumentation Engineers, 1987.
[27]
Yokoya N., Iwasaki A., Airborne Hyperspectral Data over Chikusei, Technical Report Space Application Laboratory, The University of Tokyo, Tokyo, Japan, 2016.

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      Published In

      cover image Image Communication
      Image Communication  Volume 83, Issue C
      Apr 2020
      136 pages

      Publisher

      Elsevier Science Inc.

      United States

      Publication History

      Published: 01 April 2020

      Author Tags

      1. Hyperspectral image quality assessment
      2. Mid-level feature
      3. Deep features
      4. Multiple kernel learning
      5. Quality-aware

      Qualifiers

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      • (2022)Aided Recognition and Training of Music Features Based on the Internet of Things and Artificial IntelligenceComputational Intelligence and Neuroscience10.1155/2022/37338182022Online publication date: 11-Mar-2022

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