Stairs detection with odometry-aided traversal from a wearable RGB-D camera
نویسندگان
چکیده
Stairs are one of the most common structures present in human-made scenarios, but also one of the most dangerous for those with vision problems. In this work we propose a complete method to detect, locate and parametrise stairs with a wearable RGB-D camera. Our algorithm uses the depth data to determine if the horizontal planes in the scene are valid steps of a staircase judging their dimensions and relative positions. As a result we obtain a scaled model of the staircase with the spatial location and orientation with respect to the subject. The visual odometry is also estimated to continuously recover the current position and orientation of the user while moving. This enhances the system giving the ability to come back to previously detected features and providing location awareness of the user during the climb. Simultaneously, the detection of the staircase during the traversal is used to correct the drift of the visual odometry. A comparison of results of the stair detection with other state-of-the-art algorithms was performed using public dataset. Additional experiments have also been carried out, recording our own natural scenes with a chest-mounted RGB-D camera in indoor scenarios. The algorithm is robust enough to work in real-time and even under partial occlusions of the stair.
منابع مشابه
RGB-D camera Based Navigation for the Visually Impaired
We present a wearable RGB-D camera based navigation system for the visually impaired. The navigation system is expected to enable the visually impaired to extend the range of their activities compared to that provided by conventional aid devices, such as white cane. Since this design is a successor version of a previous stereo camera based system to overcome a limitation of stereo vision based ...
متن کاملA Wearable Indoor Navigation System with Context Based Decision Making For Visually Impaired
This paper presents a wearable indoor navigation system that helps visually impaired user to perform indoor navigation. The system takes advantage of the Simultaneous Localization and Mapping (SLAM) and semantic path planning to accomplish localization and navigation tasks while collaborating with the visually impaired user. It integrates multiple sensors and feedback devices as an RGB-D camera...
متن کاملInvariant Observer-Based State Estimation for Micro-Aerial Vehicles in GPS-Denied Indoor Environments Using an RGB-D Camera and MEMS Inertial Sensors
This paper presents a non-linear state observer-based integrated navigation scheme for estimating the attitude, position and velocity of micro aerial vehicles (MAV) operating in GPS-denied indoor environments, using the measurements from low-cost MEMS (micro electro-mechanical systems) inertial sensors and an RGB-D camera. A robust RGB-D visual odometry (VO) approach was developed to estimate t...
متن کاملRGB-D Sensor-Based Computer Vision Assistive Technology for Visually Impaired Persons
A computer vision-based wayfinding and navigation aid can improve the mobility of blind and visually impaired people to travel independently. In this chapter, we focus on RGB-D sensor-based computer vision technologies in application to assist blind and visually impaired persons. We first briefly review the existing computer vision based assistive technology for the visually impaired. Then we p...
متن کاملGround-plane based indoor mobile robot localization using RGB-D sensor1
This paper addresses the problem of absolute localization in an indoor environment using a RGB-Depth camera. The approach is based on the use of the ground region perceived by the RGB camera to detect and decode its position and edges. The localization system uses this data to match it with a known on-board map. The ground plane detection algorithm is designed to be robust to vibration or distu...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Computer Vision and Image Understanding
دوره 154 شماره
صفحات -
تاریخ انتشار 2017