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Image Dehazing using Dark and Bright Channel Priors and Multi-scale Filters | IEEE Conference Publication | IEEE Xplore

Image Dehazing using Dark and Bright Channel Priors and Multi-scale Filters


Abstract:

The paper proposes bright and dark channel priors dependent single image based dehazing in two color spaces. The hazy RGB is first converted into YCbCr space. Transmissio...Show More

Abstract:

The paper proposes bright and dark channel priors dependent single image based dehazing in two color spaces. The hazy RGB is first converted into YCbCr space. Transmission maps are estimated using dark channel priors (DCPs) and airlight of intensity (in YCbCr) and RGB components computed using three window sizes. Bright channel priors (BCPs) and threshold values are also computed for YCbCr and RGB color spaces. The transmission maps are adjusted using DCPs and BCPs and refined using multiscale guided filter to obtain a superior dehazed image. Comparison (both visually and qualitatively) on variety of images exhibits the significance of proposed technique over existing techniques.
Date of Conference: 16-17 December 2020
Date Added to IEEE Xplore: 29 January 2021
ISBN Information:
Conference Location: Lahore, Pakistan
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I. Introduction

Image dehazing is an essential pre-processing step in different computer vision applications. Various techniques have been developed based on physical characteristics and imaging models to address this challenging problem, few are summarized here. Ren et al. [1] use fusion based encoder-decoder architecture and a multi-scale gated fusion network (GFN) to achieve dehazed images. Bui and Kim [2] presented dehazing technique with a prior basing upon color ellipsoid and clustering to reduce haze and noise levels while minimizing the computational complexity. Cheng et al. [3] proposed a color priors approach basing upon extracted semantic features for single image dehazing. The design accurately recovers clean scene under strong estimation ambiguity, e.g. strong haze and semi-saturated ambient illumination, with learned semantic priors. Zhang and Patel [4] proposed a deep learning- based dehazing method that including a encoder-decoder which is densely connected along with a pooling module of multi-level and (GAN) framework generative adversarial network based on a joint discriminator. Li et al. [5] proposed a conditional GAN for end to end trained network with an encoder and decoder architecture used to capture useful information. Li et al. [6] presented a flexible cascaded convolutional neutral network (CNN) to dehaze images, which considers global airlight and medium transmission jointly using two task-driven subnetworks.

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