Affiliation:
1. Indian Institute of Technology Kharagpur, Kharagpur, West Bengal, India
Abstract
Defocus blur detection (DBD) aims to segment the blurred regions from a given image affected by defocus blur. It is a crucial pre-processing step for various computer vision tasks. With the increasing popularity of small mobile devices, there is a need for a computationally efficient method to detect defocus blur accurately. We propose an efficient defocus blur detection method that estimates the probability of each pixel being focused or blurred in resource-constraint devices. Despite remarkable advances made by the recent deep learning-based methods, they still suffer from several challenges such as background clutter, scale sensitivity, indistinguishable low-contrast focused regions from out-of-focus blur, and especially high computational cost and memory requirement. To address the first three challenges, we develop a novel deep network that efficiently detects blur map from the input blurred image. Specifically, we integrate multi-scale features in the deep network to resolve the scale ambiguities and simultaneously modeled the non-local structural correlations in the high-level blur features. To handle the last two issues, we eventually frame our DBD algorithm to perform knowledge distillation by transferring information from the larger teacher network to a compact student network. All the networks are adversarially trained in an end-to-end manner to enforce higher order consistencies between the output and the target distributions. Experimental results demonstrate the state-of-the-art performance of the larger teacher network, while our proposed lightweight DBD model imitates the output of the teacher network without significant loss in accuracy. The codes, pre-trained model weights, and the results will be made publicly available.
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture
Reference47 articles.
1. Soonmin Bae and Frédo Durand. 2007. Defocus magnification. In Computer Graphics Forum, Vol. 26. 571–579.
2. Marcela Carvalho, Bertrand Le Saux, Pauline Trouvé-Peloux, Andrés Almansa, and Frédéric Champagnat. 2018. Deep depth from defocus: How can defocus blur improve 3D estimation using dense neural networks? In Proceedings of the European Conference on Computer Vision (ECCV’18) Workshops.
3. Global Contrast Based Salient Region Detection
4. X. Cun and C. M. Pun. 2020. Defocus blur detection via depth distillation. In Proceedings of the European Conference Computer Vision (ECCV’20), Vol. 12358. 747–763.
5. ImageNet: A large-scale hierarchical image database
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