ElSe: ellipse selection for robust pupil detection in real-world environments
نویسندگان
چکیده
Fast and robust pupil detection is an essential prerequisite for video-based eye-tracking in real-world settings. Several algorithms for image-based pupil detection have been proposed, their applicability is mostly limited to laboratory conditions. In realworld scenarios, automated pupil detection has to face various challenges, such as illumination changes, reflections (on glasses), make-up, non-centered eye recording, and physiological eye characteristics. We propose ElSe, a novel algorithm based on ellipse evaluation of a filtered edge image. We aim at a robust, resource-saving approach that can be integrated in embedded architectures e.g. driving. The proposed algorithm was evaluated against four state-of-the-art methods on over 93,000 hand-labeled images from which 55,000 are new images contributed by this work. On average, the proposed method achieved a 14.53% improvement on the detection rate relative to the best state-of-the-art performer. download:ftp://[email protected] (password:eyedata).
منابع مشابه
Pupil detection in the wild: An evaluation of the state of the art in mobile head-mounted eye tracking
Robust and accurate detection of the pupil position is a key building block for head-mounted eye tracking and prerequisite for applications on top, such as gaze-based humancomputer interaction or attention analysis. Despite a large body of work, detecting the pupil in images recorded under real-world conditions is challenging given significant variability in the eye appearance (e.g., illuminati...
متن کاملPuRe: Robust pupil detection for real-time pervasive eye tracking
Real-time, accurate, and robust pupil detection is an essential prerequisite to enable pervasive eye-tracking and its applications – e.g., gaze-based human computer interaction, health monitoring, foveated rendering, and advanced driver assistance. However, automated pupil detection has proved to be an intricate task in real-world scenarios due to a large mixture of challenges such as quickly c...
متن کاملRobust pupil center detection using a curvature algorithm.
Determining the pupil center is fundamental for calculating eye orientation in video-based systems. Existing techniques are error prone and not robust because eyelids, eyelashes, corneal reflections or shadows in many instances occlude the pupil. We have developed a new algorithm which utilizes curvature characteristics of the pupil boundary to eliminate these artifacts. Pupil center is compute...
متن کاملExCuSe: Robust Pupil Detection in Real-World Scenarios
The reliable estimation of the pupil position is one the most important prerequisites in gaze-based HMI applications. Despite the rich landscape of image-based methods for pupil extraction, tracking the pupil in real-world images is highly challenging due to variations in the environment (e.g. changing illumination conditions, reflection, etc.), in the eye physiology or due to variations relate...
متن کاملA Probabilistic Mixture Approach to Automatic Ellipse Detection
Ellipse detection from a digital image, especially with a complicated background, is still a very challenging problem in image analysis and understanding, and its difficulty relies on how to effectively model these ellipses from edge pixels and locate them automatically. In this paper, we propose a probabilistic mixture model for the probable ellipses in the image and implement a Bayesian Ying-...
متن کامل