Stereo Vision Based Sensory Substitution for the Visually Impaired.
Simona CaraimanOtilia ZvoristeanuAdrian BurlacuPaul HerghelegiuPublished in: Sensors (Basel, Switzerland) (2019)
The development of computer vision based systems dedicated to help visually impaired people to perceive the environment, to orientate and navigate has been the main research subject of many works in the recent years. A significant ensemble of resources has been employed to support the development of sensory substitution devices (SSDs) and electronic travel aids for the rehabilitation of the visually impaired. The Sound of Vision (SoV) project used a comprehensive approach to develop such an SSD, tackling all the challenging aspects that so far restrained the large scale adoption of such systems by the intended audience: Wearability, real-time operation, pervasiveness, usability, cost. This article is set to present the artificial vision based component of the SoV SSD that performs the scene reconstruction and segmentation in outdoor environments. In contrast with the indoor use case, where the system acquires depth input from a structured light camera, in outdoors SoV relies on stereo vision to detect the elements of interest and provide an audio and/or haptic representation of the environment to the user. Our stereo-based method is designed to work with wearable acquisition devices and still provide a real-time, reliable description of the scene in the context of unreliable depth input from the stereo correspondence and of the complex 6 DOF motion of the head-worn camera. We quantitatively evaluate our approach on a custom benchmarking dataset acquired with SoV cameras and provide the highlights of the usability evaluation with visually impaired users.
Keyphrases
- convolutional neural network
- electronic health record
- deep learning
- air pollution
- high speed
- optical coherence tomography
- magnetic resonance
- particulate matter
- health information
- computed tomography
- quality improvement
- magnetic resonance imaging
- neural network
- mass spectrometry
- social media
- high resolution
- virtual reality