A New Image Quality Database for Multiple Industrial Processes (2401.13956v3)
Abstract: Recent years have witnessed a broader range of applications of image processing technologies in multiple industrial processes, such as smoke detection, security monitoring, and workpiece inspection. Different kinds of distortion types and levels must be introduced into an image during the processes of acquisition, compression, transmission, storage, and display, which might heavily degrade the image quality and thus strongly reduce the final display effect and clarity. To verify the reliability of existing image quality assessment methods, we establish a new industrial process image database (IPID), which contains 3000 distorted images generated by applying different levels of distortion types to each of the 50 source images. We conduct the subjective test on the aforementioned 3000 images to collect their subjective quality ratings in a well-suited laboratory environment. Finally, we perform comparison experiments on IPID database to investigate the performance of some objective image quality assessment algorithms. The experimental results show that the state-of-the-art image quality assessment methods have difficulty in predicting the quality of images that contain multiple distortion types.
- K. Gu, Y. Zhang, and J. Qiao. “Ensemble meta-learning for few-shot soot density recognition,” IEEE Transactions on Industrial Informatics, 2021, 17(3): 2261-2270.
- K. Gu, Z. Xia, J. Qiao, and W. Lin. “Deep dual-channel neural network for image-based smoke detection,” IEEE Transactions on Multimedia, 2020, 22(2): 311-323.
- L. Li, G. Wang, L. Cormack, and A. C. Bovik. “Efficient and secure image communication system based on compressed sensing for IoT monitoring applications,” IEEE Transactions on Multimedia, 2020, 22(1): 82-95.
- A. PRMD and R. G. Lins. “Computer vision system for workpiece referencing in three-axis machining centers,” The International Journal of Advanced Manufacturing Technology, 2020, 106: 2007-2020.
- K. Gu, D. Tao, J. Qiao, and W. Lin. “Learning a no-reference quality assessment model of enhanced images with big data,” IEEE Transactions on Neural Networks and Learning Systems, 2018, 29(4): 1301-1313.
- K. Gu, G. Zhai, W. Lin, and M. Liu. “The analysis of image contrast: From quality assessment to automatic enhancement,” IEEE Transactions on Cybernetics, 2016, 46(1): 284-297.
- J. Xu, L. Zhang, and D. Zhang. “External prior guided internal prior learning for real-world noisy image denoising,” IEEE Transactions on Image Processing, 2018, 27(6): 2996-3010.
- X. Min, K. Ma, K. Gu, G. Zhai, Z. Wang, and W. Lin. “Unified blind quality assessment of compressed natural, graphic, and screen content images,” IEEE Transactions on Image Processing, 2017, 26(11): 5462-5474.
- X. Min, G. Zhai, K. Gu, X. Yang, and X. Guan. “Objective quality evaluation of dehazed images,” IEEE Transactions on Intelligent Transportation Systems, 2019, 20(8): 2879-2892.
- K. Gu, G. Zhai, X. Yang, and W. Zhang. “Hybrid no-reference quality metric for singly and multiply distorted images,” IEEE Transactions on Broadcasting, 2014, 60(3): 555-567. vol.
- K. Gu, M. Liu, G. Zhai, X. Yang, and W. Zhang, “Quality assessment considering viewing distance and image resolution,” IEEE Transactions on Broadcasting, 2015, 61(3): 520-531.
- K. Gu, S. Wang, G. Zhai, S. Ma, X. Yang, and W. Zhang. “Content-weighted mean-squared error for quality assessment of compressed images,” Signal, Image and Video Processing, 2016, 10(5): 803-810.
- E. D. Di Claudio and G. Jacovitti. “A detail-based method for linear full reference image quality prediction,” IEEE Transactions on Image Processing, 2018, 27(1): 179-193.
- K. Gu, G. Zhai, X. Yang, and W. Zhang. “A new reduced-reference image quality assessment using structural degradation model,” in Proceeding IEEE International Symposium on Circuits and Systems,2013, 1095-1098.
- M. Liu, K. Gu, G. Zhai, P. LeCallet, and W. Zhang. “Perceptual reduced-reference visual quality assessment for contrast alteration,” IEEE Transactions on Broadcasting, 2017, 63(1): 71-81.
- A. Mittal, A. K. Moorthy, and A. C. Bovik. “No-reference image quality assessment in the spatial domain,” IEEE Transactions on Image Processing, 2012, 21(12): 4695-4708.
- K. Gu, G. Zhai, X. Yang, and W. Zhang. “Using free energy principle for blind image quality assessment,” IEEE Transactions on Multimedia, 2015, 17(1): 50-63.
- X. Min, K. Gu, G. Zhai, J. Liu, X. Yang and C. W. Chen. “Blind Quality Assessment Based on Pseudo-Reference Image,” IEEE Transactions on Multimedia, 2018, 20(8): 2049-2062.
- X. Min, G. Zhai, K. Gu, Y. Liu and X. Yang. “Blind Image Quality Estimation via Distortion Aggravation,” IEEE Transactions on Broadcasting, 2018, 64(2): 508-517.
- Yue. G, Hou. C, and Zhou. T. “Blind Quality Assessment of Tone-Mapped Images Considering Colorfulness, Naturalness, and Structure,” IEEE Transactions on Industrial Electronics, 2019, 66(5): 3784-3793.
- Y. Liu, K. Gu, S. Wang, D. Zhao, and W. Gao. “Blind Quality Assessment of Camera Images Based on Low-Level and High-Level Statistical Features,” IEEE Transactions on Multimedia, 2019, 21(1): 135-146.
- K. Gu, G. Zhai, M. Liu, X. Yang, W. Zhang, X. Sun, W. Chen, and Y. Zuo. “FISBLIM: A five-step blind metric for quality assessment of multiply distorted images,” IEEE Workshop Signal Processing Systems, 2013, 241–246.
- S. Wang, K. Gu, S. Ma, W. Lin, X. Liu, and W. Gao. “Guided Image Contrast Enhancement Based on Retrieved Images in Cloud,” IEEE Transactions on Multimedia, 2016, 18(2): 219-232.
- K. Gu, J. Qiao, S. Lee, H. Liu, W. Lin, and P. Le Callet. “Multiscale Natural Scene Statistical Analysis for No-Reference Quality Evaluation of DIBR-Synthesized Views,” IEEE Transactions on Broadcasting, 2020, 66(1): 127-139.
- Z. Wang and A. C. Bovik. “Mean squared error: Love it or leave it? A new look at signal fidelity measures,” IEEE Signal Processing Magazine, 2009, 26(1): 98-117.
- Z. Wang, A. C. Bovik, H. R. Sheikh, and E. P. Simoncelli. “Image quality assessment: from error visibility to structural similarity,” IEEE Transactions on Image Processing, 2004, 13(4): 600-612.
- H. R. Sheikh and A. C. Bovik. “Image information and visual quality,” IEEE Transactions on Image Processing, 2006, 15(2): 430-444.
- D. M. Chandler and S. S Hemami. “VSNR: A wavelet-based visual signal-to-noise ratio for natural images,” IEEE Transactions on Image Processing, 2007, 16(9): 2284-2296.
- A. Mittal, R. Soundararajan, and A. C. Bovik. “Making a completely blind image quality nanlyzer,” IEEE Signal Processing Letter, 2013, 20(3): 209-212.
- K. Gu, G. Zhai, X. Yang, and W. Zhang. “No-reference quality metric of contrast-distorted images based on information maximization,” IEEE Transactions on Cybernetics, 2017, 47(12): 4559-4565.
- K. Gu, G. Zhai, W. Lin, X. Yang, and W. Zhang. “No-reference image sharpness assessment in autoregressive parameter space,” IEEE Transactions on Image Processing, 2015, 24(10): 3218-3231.
- ITU. “Methodology for the subjective assessment of the quality of television pictures,” Recommendation, International Telecommunication Union/ITU Ratio communication Sector, 2009.
- L.Li, Y. Zhou, W. Lin, J. Wu, X. Zhang, and B. Chen. “No-reference quality assessment of deblocked images,” Neurocomputing, 2016, 177: 572-584.
- Z. Wang, E.P. Simoncelli, and A.C. Bovik. “Multiscale structural similarity for image quality assessment,” Proceeding 37th Asilomar Conference on Signals, 2003, 2: 1398-1402.
- H. R. Sheikh, and A. C. Bovik. “Image information and visual quality,” IEEE Transactions on Image Processing, 2006, 15(2): 430-444.
- V. Upadhyaya, and M. Salim. “Compressive sensing based computed tomography Imaging: an effective approach for COVID-19 detection,” International Journal of Wavelets Multiresolution and Information Processing, 2021.
- A. Liu, W. Lin, and M. Narwaria. “Image quality assessment based on gradient similarity,” IEEE Transactions on Image Processing, 2012, 4:21.
- K. Gu, G. Zhai, X. Yang, and W. Zhang. “An efficient color image quality metric with local-tuned-global model,” IEEE International Conference on Image Processing (ICIP), 2014, 506-510.
- L. Zhang, Y. Shen, and H. Li. “VSI: A visual saliency-induced index for perceptual image quality assessment,” IEEE Transactions on Image Processing, 2014, 23(10): 4270-4281.
- B. Appina, S. V. R. Dendi, K. Manasa, S. S. Channappayya, and A. C. Bovik. “Study of Subjective Quality and Objective Blind Quality Prediction of Stereoscopic Videos,” IEEE Transactions on Image Processing, 2019, 28(10): 5027-5040.
- K. Gu, L. Li, H. Lu, X. Min, and W. Lin. “A Fast Reliable Image Quality Predictor by Fusing Micro- and Macro-Structures,” IEEE Transactions on Industrial Electronics, 2017, 64(5): 3903-3912.