RGB-D mutual guidance for semi-supervised defocus blur detection

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Defocus blur detection (DBD) aims to detect and locate defocus features in visual scenes. While available fully supervised DBD methods improve detection accuracy, they rely on large-scale handcrafted pixel-level labels and single-mode images, which makes them expensive and error-prone. In this work, we explore the use of depth information in a semi-supervised DBD method for the first time. Different from previous approaches, we generate a pair of reversible defocused homogeneous regions in weakly supervised mutual guidance networks (MGMs) to provide weak semantic guidance for this task. In a strongly supervised mutual attention network, depth information and RGB features are used to learn the defocus blur homogeneous region from the ground truth (GT). Meanwhile, depth information is extracted using a depth estimation network to guide the defocus location and provide a strong prior for the weakly supervised part. The experimental results show that our network outperform the available fully supervised methods in DBD, and provides new inspiration for research on semi-supervised robust and RGB-D multi-modal DBD.

论文关键词:Defocus blur detection,Mutual guidance,Mutual attention,RGB-D

论文评审过程:Received 21 March 2022, Revised 22 June 2022, Accepted 11 August 2022, Available online 23 August 2022, Version of Record 1 September 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109682