Author:
Wang Jung-Hua,Huang Ren-Jie,Wang Ting-Yuan
Abstract
AbstractThis paper presents a novel bio-inspired edge-oriented approach to perceptual contour extraction. Our method does not rely on segmentation and can unsupervised learn to identify edge points that are readily grouped, without invoking any connecting mechanism, into object boundaries as perceived by human. This goal is achieved by using a dynamic mask to statistically assess the inter-edge relations and probe the principal direction that acts as an edge-grouping cue. The novelty of this work is that the mask, centered at a target pixel and driven by EM algorithm, can iteratively deform and rotate until it covers pixels that best fit the Bayesian likelihood of the binary class w.r.t a target pixel. By creating an effect of enlarging receptive field, contiguous edges of the same object can be identified while suppressing noise and textures, the resulting contour is in good agreement with gestalt laws of continuity, similarity and proximity. All theoretical derivations and parameters updates are conducted under the framework of EM-based Bayesian inference. Issues of stability and parameter uncertainty are addressed. Both qualitative and quantitative comparison with existing approaches proves the superiority of the proposed method in terms of tracking curved contours, noises/texture resilience, and detection of low-contrast contours.
Funder
Ministry of Science and Technology, Taiwan
Publisher
Springer Science and Business Media LLC
Reference44 articles.
1. Walter, J. et al. High-throughput field imaging and basic image analysis in a wheat breeding programme. Front. Plant Sci. 10, 449 (2019).
2. Nyström, I., Heredia, Y. H. & Núñez, V. M. Progress in Pattern Recognition, Image Analysis, Computer Vision, and Applications. In: Proc. 24th Iberoamerican Congress (CIARP) 11896 (2019).
3. Xu, R., Nikouei, S., Chen, Y., Polunchenko, A., Song, S., Deng, C. & Faughnan, T. R. Real-time human objects tracking for smart surveillance at the edge. 2018 IEEE Inter. Conf. on Communications (ICC), Kansas City, USA, 1–6 (2018).
4. Gonzalez, R. & Woods, R. Digital image processing. Pearson, 4th ed (2017).
5. Kaur, H. & Kaur, L. Performance comparison of different feature detection methods with gabor filter. Int. J. Sci. Res. 3(5), 1879–1886 (2014).