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DefenceLite: An Effective Lightweight GAN-Based Image De-Fencing Model

dc.contributor.authorGupta D.; Kiyawat D.; Venkata Vinay Kumar V.; Mishra U.; Chattopadhyay P.
dc.date.accessioned2025-05-23T10:56:35Z
dc.description.abstractImage de-fencing refers to the removal of fence structures from an image thereby creating a visually attractive synthetic image rendered with appropriate colors in place of the fence regions in the input image. In this paper, we focus on developing a lightweight deep neural model for image de-fencing that can be conveniently used on devices with less memory and processing power such as smartphones and other portable devices. Specifically, we present a response-based knowledge-distilled student model termed DefenceLite which is trained by transferring knowledge from an effective GAN-based teacher de-fencing model. DefenceLite has fewer parameters (approximately 80% less) than the teacher model and, thus, has a lower response time. It is trained with an extensive dataset consisting of pairs of fenced and corresponding de-fenced images using a combination of adversarial loss and L1 loss. According to experimental findings, DefenceLite is capable of providing visually pleasing de-fenced outputs that are comparable with the teacher model outputs but at the cost of significantly less processing time. Qualitative and quantitative comparative studies with recent deep learning-based de-fencing techniques demonstrate that despite being much lighter, DefenceLite has the potential to achieve results comparable to the recently developed deeper de-fencing models. © The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2025.
dc.identifier.doihttps://doi.org/10.1007/978-981-97-5035-1_26
dc.identifier.urihttp://172.23.0.11:4000/handle/123456789/4058
dc.relation.ispartofseriesLecture Notes in Networks and Systems
dc.titleDefenceLite: An Effective Lightweight GAN-Based Image De-Fencing Model

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