J. Imaging, Free Full-Text

Por um escritor misterioso

Descrição

Image relighting, which involves modifying the lighting conditions while preserving the visual content, is fundamental to computer vision. This study introduced a bi-modal lightweight deep learning model for depth-guided relighting. The model utilizes the Res2Net Squeezed block’s ability to capture long-range dependencies and to enhance feature representation for both the input image and its corresponding depth map. The proposed model adopts an encoder–decoder structure with Res2Net Squeezed blocks integrated at each stage of encoding and decoding. The model was trained and evaluated on the VIDIT dataset, which consists of 300 triplets of images. Each triplet contains the input image, its corresponding depth map, and the relit image under diverse lighting conditions, such as different illuminant angles and color temperatures. The enhanced feature representation and improved information flow within the Res2Net Squeezed blocks enable the model to handle complex lighting variations and generate realistic relit images. The experimental results demonstrated the proposed approach’s effectiveness in relighting accuracy, measured by metrics such as the PSNR, SSIM, and visual quality.
J. Imaging, Free Full-Text
Article Review of Jose J. Ventilacion's The Truth Shall Set You
J. Imaging, Free Full-Text
Note: Write each step for the following questions
J. Imaging, Free Full-Text
Peachjar Flyers
J. Imaging, Free Full-Text
Pay to download Elsevier's “open access” articles
J. Imaging, Free Full-Text
Letter J SVG Cut File Letter J Alphabet Cutting Files
J. Imaging, Free Full-Text
Free Cubans Confute Senator J. William Fulbright: Letter to
J. Imaging, Free Full-Text
X-Rite Utility Get File - Colaboratory
J. Imaging, Free Full-Text
JTurkGerGynecolAssoc on X: Long-term outcomes of fetal posterior
J. Imaging, Free Full-Text
Journal of Medical Imaging
de por adulto (o preço varia de acordo com o tamanho do grupo)