Image denoising using deep convolutional autoencoder with feature pyramids

العنوان Image denoising using deep convolutional autoencoder with feature pyramids
المؤلف Çetinkaya, Ekrem, Kıraç, Mustafa Furkan
تاريخ النشر: 2020
مكان النشر - TÜBİTAK
الموضوع Image denoising, Convolutional autoencoder, Feature pyramid, Image processing
النوع دورية
اللغة الإنجليزية
رقمي نعم
مخطوط لا
المكتبة: جامعة اوزيجين
معرف أصل المكتبة 1300-0632
رقم السجل eafabec9-5bc9-4c8b-a03d-c11f81590dd2
موقع المكتبة Computer Science
التاريخ 2020
نص عينة Image denoising is 1 of the fundamental problems in the image processing field since it is the preliminary step for many computer vision applications. Various approaches have been used for image denoising throughout the years from spatial filtering to model-based approaches. Having outperformed all traditional methods, neural-network-based discriminative methods have gained popularity in recent years. However, most of these methods still struggle to achieve flexibility against various noise levels and types. In this paper, a deep convolutional autoencoder combined with a variant of feature pyramid network is proposed for image denoising. Simulated data generated by Blender software along with corrupted natural images are used during training to improve robustness against various noise levels. Experimental results show that the proposed method can achieve competitive performance in blind Gaussian denoising with significantly less training time required compared to state of the art methods. Extensive experiments showed the proposed method gives promising performance in a wide range of noise levels with a single network.
DOI 10.3906/elk-1911-138
Cilt 28
عرض في المصدر جامعة اوزيجين Özyeğin Üniversitesi
Özyeğin Üniversitesi جامعة اوزيجين

Image denoising using deep convolutional autoencoder with feature pyramids

المؤلف Çetinkaya, Ekrem, Kıraç, Mustafa Furkan
تاريخ النشر 2020
مكان النشر - TÜBİTAK
الموضوع Image denoising, Convolutional autoencoder, Feature pyramid, Image processing
النوع دورية
اللغة الإنجليزية
رقمي نعم
مخطوط لا
المكتبة جامعة اوزيجين
معرف أصل المكتبة 1300-0632
رقم السجل eafabec9-5bc9-4c8b-a03d-c11f81590dd2
موقع المكتبة Computer Science
التاريخ 2020
نص عينة Image denoising is 1 of the fundamental problems in the image processing field since it is the preliminary step for many computer vision applications. Various approaches have been used for image denoising throughout the years from spatial filtering to model-based approaches. Having outperformed all traditional methods, neural-network-based discriminative methods have gained popularity in recent years. However, most of these methods still struggle to achieve flexibility against various noise levels and types. In this paper, a deep convolutional autoencoder combined with a variant of feature pyramid network is proposed for image denoising. Simulated data generated by Blender software along with corrupted natural images are used during training to improve robustness against various noise levels. Experimental results show that the proposed method can achieve competitive performance in blind Gaussian denoising with significantly less training time required compared to state of the art methods. Extensive experiments showed the proposed method gives promising performance in a wide range of noise levels with a single network.
DOI 10.3906/elk-1911-138
Cilt 28
Özyeğin Üniversitesi
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