Title : Deep Learning in Image Computing: An Overview
Authors : Jomy John Volume 1 Issue 1 Pages: 33 - 40
ABSTRACT - Deep learning is a growing trend in computing. It is an improvement to artificial neural network. Deep Neural Networks are used in image classification, detection and segmentation. In this paper, an overview is carried out about the usage of deep neural network in various areas of image computing including image quality assessment, document imaging, object recognition, medical imaging, content based image retrieval and microscopy images with representative notable works in these areas. These works reveal that promising results are emerging with the help of deep learning architecture.
References
- H. Greenspan, B. van Ginneken, and R. M. Summers, “Guest editorial deep learning in medical imaging: Overview and future promise of an exciting new technique,” IEEE Transactions on Medical Imaging, vol. 35, no. 5, pp. 1153–1159, 2016.
- J. Schmidhuber, “Deep learning in neural networks: An overview,” Neural Networks, vol. 61, pp. 85–117, 2015.
- D. Yu, L. Deng, and D. Yu, “Deep learning methods and applications,”Foundations and Trends in Signal Processing, 2014.
- G. Hinton, “Deep belief networks,” Scholarpedia, 4(5): 5947.
- L. Kang, P. Ye, Y. Li, and D. Doermann, “A deep learning approach to document image quality assessment,” in 2014 IEEE International Conference on Image Processing (ICIP), pp. 2570–2574, IEEE, 2014.
- S. Bianco, L. Celona, P. Napoletano, and R. Schettini, “On the use of deep learning for blind image quality assessment,” arXiv preprint arXiv:1602.05531, 2016.
- A. Giusti, D. C. Cires¸an, J. Masci, L. M. Gambardella, and J. Schmidhu- ber, “Fast image scanning with deep max-pooling convolutional neural networks,” arXiv preprint arXiv:1302.1700, 2013.
- M. Liwicki12, V. Frinken, and M. Z. Afzal, “Latest developments of lstm neural networks with applications of document image analysis,” Handbook of Pattern Recognition and Computer Vision, p. 293, 2015.
- A. Graves and J. Schmidhuber, “Offline handwriting recognition with multidimensional recurrent neural networks,” Advances in Neural Infor- mation Processing Systems 22 (NIPS’22), 2009.
- A. W. Harley, A. Ufkes, and K. G. Derpanis, “Evaluation of deep convolutional nets for document image classification and retrieval,” in Document Analysis and Recognition (ICDAR), 2015 13th International Conference on, pp. 991–995, IEEE, 2015.
- D. Erhan, C. Szegedy, A. Toshev, and D. Anguelov, “Scalable object detection using deep neural networks,” in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 2147–
2154, 2014.
- M. Oquab, L. Bottou, I. Laptev, and J. Sivic, “Learning and transferring mid-level image representations using convolutional neural networks,” in Proceedings of the IEEE conference on computer vision and pattern recognition, pp. 1717–1724, 2014.
- T.-H. Chan, K. Jia, S. Gao, J. Lu, Z. Zeng, and Y. Ma, “Pcanet: A simple deep learning baseline for image classification?,” IEEE Transactions on Image Processing, vol. 24, no. 12, pp. 5017–5032, 2015.
- K. Petersen, M. Nielsen, P. Diao, N. Karssemeijer, and M. Lillholm, “Breast tissue segmentation and mammographic risk scoring using deep learning,” in International Workshop on Digital Mammography, pp. 88–94, Springer, 2014.
- V. Veeriah, R. Durvasula, and G.-J. Qi, “Deep learning architecture with dynamically programmed layers for brain connectome prediction,” in Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 1205–1214, ACM, 2015.
- R. Li, W. Zhang, H.-I. Suk, L. Wang, J. Li, D. Shen, and S. Ji, “Deep learning based imaging data completion for improved brain disease diagnosis,” in International Conference on Medical Image Computing and Computer-Assisted Intervention, pp. 305–312, Springer, 2014.
- A. Prasoon, K. Petersen, C. Igel, F. Lauze, E. Dam, and M. Nielsen, “Deep feature learning for knee cartilage segmentation using a triplanar convolutional neural network,” in International Conference on Medical Image Computing and Computer-Assisted Intervention, pp. 246–253, Springer, 2013.
- H.-I. Suk and D. Shen, “Deep learning-based feature representation for ad/mci classification,” in International Conference on Medical Image Computing and Computer-Assisted Intervention, pp. 583–590, Springer, 2013.
- K.-L. Hua, C.-H. Hsu, S. C. Hidayati, W.-H. Cheng, and Y.-J. Chen, “Computer-aided classification of lung nodules on computed tomog- raphy images via deep learning technique,” OncoTargets and therapy, vol. 8, 2015.
- J. Wan, D. Wang, S. C. H. Hoi, P. Wu, J. Zhu, Y. Zhang, and J. Li, “Deep learning for content-based image retrieval: A comprehensive study,” in Proceedings of the 22nd ACM international conference on Multimedia, pp. 157–166, ACM, 2014.
- O. Z. Kraus, J. L. Ba, and B. J. Frey, “Classifying and segmenting mi- croscopy images with deep multiple instance learning,” Bioinformatics, vol. 32, no. 12, pp. i52–i59, 2016.
- T. Chen and C. Chefdhotel, “Deep learning based automatic immune cell detection for immunohistochemistry images,” in International Workshop on Machine Learning in Medical Imaging, pp. 17–24, Springer, 2014.