Affiliation:
1. Departamento de Informatica e Ingenieria de Sistemas Universidad de Zaragoza Zaragoza Spain
2. Departamento de Sistemas e Informatica Universidad de Caldas Manizales Colombia
3. Departamento de Ingenieria Industrial Universidad Nacional de Colombia Manizales Colombia
4. Departamento de Ciencias de la Computación e Informática Universidad de La Frontera Temuco Chile
Abstract
AbstractIn recent years, deep learning techniques had a revolutionary impact on several domains, including computer vision and image processing. This research paper focuses on exploring deep learning methods to achieve precise illuminance estimation, which holds significant importance in applications such as augmented reality, virtual reality, and photography. However, accurately estimating illuminance in complex scenes continues to pose challenges due to the intricate interplay between light sources, objects, and surfaces. The results of extensive experimentation demonstrate the immense potential of deep learning techniques in illuminance estimation. These techniques exhibit promising accuracy and robustness, enabling them to handle diverse scenarios effectively. The valuable insights derived from this study can serve as a guiding framework for future research endeavours and contribute to the development of efficient and precise methodologies for illuminance estimation across a wide range of practical applications.