Muutke küpsiste eelistusi

Inpainting and Denoising Challenges 2019 ed. [Kõva köide]

Edited by , Edited by , Edited by , Edited by , Edited by , Edited by
  • Formaat: Hardback, 144 pages, kõrgus x laius: 235x155 mm, kaal: 454 g, 56 Illustrations, color; 9 Illustrations, black and white; VIII, 144 p. 65 illus., 56 illus. in color., 1 Hardback
  • Sari: The Springer Series on Challenges in Machine Learning
  • Ilmumisaeg: 17-Oct-2019
  • Kirjastus: Springer Nature Switzerland AG
  • ISBN-10: 3030256138
  • ISBN-13: 9783030256135
Teised raamatud teemal:
  • Kõva köide
  • Hind: 48,70 €*
  • * hind on lõplik, st. muud allahindlused enam ei rakendu
  • Tavahind: 57,29 €
  • Säästad 15%
  • Raamatu kohalejõudmiseks kirjastusest kulub orienteeruvalt 2-4 nädalat
  • Kogus:
  • Lisa ostukorvi
  • Tasuta tarne
  • Tellimisaeg 2-4 nädalat
  • Lisa soovinimekirja
  • Formaat: Hardback, 144 pages, kõrgus x laius: 235x155 mm, kaal: 454 g, 56 Illustrations, color; 9 Illustrations, black and white; VIII, 144 p. 65 illus., 56 illus. in color., 1 Hardback
  • Sari: The Springer Series on Challenges in Machine Learning
  • Ilmumisaeg: 17-Oct-2019
  • Kirjastus: Springer Nature Switzerland AG
  • ISBN-10: 3030256138
  • ISBN-13: 9783030256135
Teised raamatud teemal:

The problem of dealing with missing or incomplete data in machine learning and computer vision arises in many applications. Recent strategies make use of generative models to impute missing or corrupted data. Advances in computer vision using deep generative models have found applications in image/video processing, such as denoising, restoration, super-resolution, or inpainting. 

Inpainting and Denoising Challenges comprises recent efforts dealing with image and video inpainting tasks. This includes winning solutions to the ChaLearn Looking at People inpainting and denoising challenges: human pose recovery, video de-captioning and fingerprint restoration. 

This volume starts with a wide review on image denoising, retracing and comparing various methods from the pioneer signal processing methods, to machine learning approaches with sparse and low-rank models, and recent deep learning architectures with autoencoders and variants. The following chapters present results from the Challenge, including three competition tasks at WCCI and ECML 2018. The top best approaches submitted by participants are described, showing interesting contributions and innovating methods. The last two chapters propose novel contributions and highlight new applications that benefit from image/video inpainting. 

1. A Brief Review of Image Denoising Algorithms and Beyond.- 2. ChaLearn
Looking at People: Inpainting and Denoising Challenges.- 3. U-Finger:
Multi-Scale Dilated Convolutional Network for Fingerprint Image Denoising and
Inpainting.- 4. FPD-M-net: Fingerprint Image Denoising and Inpainting Using
M-Net Based Convolutional Neural Networks.- 5. Iterative Application of
Autoencoders for Video Inpainting and Fingerprint Denoising.- 6. Video
DeCaptioning using U-Net with Stacked Dilated Convolutional Layers.- 7. Joint
Caption Detection and Inpainting using Generative Network.- 8. Generative
Image Inpainting for Person Pose Generation.- 9. Person Inpainting with
Generative Adversarial Networks.- 10. Road Layout Understanding by Generative
Adversarial Inpainting.- 11. Photo-realistic and Robust Inpainting of Faces
using Refinement GANs.