A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation

Avoiding objects independently in indoor environments for individuals with severe visual impairment is one of the significant challenges in daily life. This paper presents a wearable application to help visually impaired people quickly build situational awareness and traverse safely. The system util...

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Main Authors: Zhongen Li, Fanghao Song, Brian C. Clark, Dustin R. Grooms, Chang Liu
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9211506/
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spelling doaj-f3bba88a3f45409f8c0320684f321f402021-03-30T04:35:33ZengIEEEIEEE Access2169-35362020-01-01818480818482110.1109/ACCESS.2020.30285279211506A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground SegmentationZhongen Li0https://orcid.org/0000-0001-9553-8652Fanghao Song1Brian C. Clark2Dustin R. Grooms3https://orcid.org/0000-0001-6102-8224Chang Liu4https://orcid.org/0000-0002-6721-1959School of Electrical and Computer Engineering, Ohio University, Athens, OH, USASchool of Electrical and Computer Engineering, Ohio University, Athens, OH, USAOhio Musculoskeletal and Neurological Institute, Ohio University, Athens, OH, USACollege of Health Sciences and Professions, Ohio University, Athens, OH, USASchool of Electrical and Computer Engineering, Ohio University, Athens, OH, USAAvoiding objects independently in indoor environments for individuals with severe visual impairment is one of the significant challenges in daily life. This paper presents a wearable application to help visually impaired people quickly build situational awareness and traverse safely. The system utilizes Red, Green, Blue, and Depth (RGB-D) camera and an Inertial Measurement Unit (IMU) to detect objects and the collision-free path in real-time. A region proposal module is presented to decide where to identify the ground from 3D point clouds. The segmented ground area can act as the traversable path, and its corresponding region in the image is removed to prevent detecting painted objects. The system can provide information about the category, distance, and direction of the detected objects by fusing the depth image and the neural network results. A 3D acoustic feedback mechanism is designed to improve the situational awareness for visually impaired people, and guild them traverse safely. The advantage of this system is that our 3D region proposal module can robustly propose the potential ground region and greatly reduce the computation cost of the ground segmentation. Besides, a typical machine-learning-based approach may miss objects because they could not be recognized, though they still may pose a danger. Another advantage of our approach is that the imminent danger detector can detect such unrecognizable objects to help users avoid a collision. Finally, experimental results demonstrate that the proposed system can be a useful indoor assistant tool to help blind individuals with collision avoidance and wayfinding.https://ieeexplore.ieee.org/document/9211506/Convolutional neural networkground segmentationobject detectionpoint cloudregion of interestvisual impairment
collection DOAJ
language English
format Article
sources DOAJ
author Zhongen Li
Fanghao Song
Brian C. Clark
Dustin R. Grooms
Chang Liu
spellingShingle Zhongen Li
Fanghao Song
Brian C. Clark
Dustin R. Grooms
Chang Liu
A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation
IEEE Access
Convolutional neural network
ground segmentation
object detection
point cloud
region of interest
visual impairment
author_facet Zhongen Li
Fanghao Song
Brian C. Clark
Dustin R. Grooms
Chang Liu
author_sort Zhongen Li
title A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation
title_short A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation
title_full A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation
title_fullStr A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation
title_full_unstemmed A Wearable Device for Indoor Imminent Danger Detection and Avoidance With Region-Based Ground Segmentation
title_sort wearable device for indoor imminent danger detection and avoidance with region-based ground segmentation
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Avoiding objects independently in indoor environments for individuals with severe visual impairment is one of the significant challenges in daily life. This paper presents a wearable application to help visually impaired people quickly build situational awareness and traverse safely. The system utilizes Red, Green, Blue, and Depth (RGB-D) camera and an Inertial Measurement Unit (IMU) to detect objects and the collision-free path in real-time. A region proposal module is presented to decide where to identify the ground from 3D point clouds. The segmented ground area can act as the traversable path, and its corresponding region in the image is removed to prevent detecting painted objects. The system can provide information about the category, distance, and direction of the detected objects by fusing the depth image and the neural network results. A 3D acoustic feedback mechanism is designed to improve the situational awareness for visually impaired people, and guild them traverse safely. The advantage of this system is that our 3D region proposal module can robustly propose the potential ground region and greatly reduce the computation cost of the ground segmentation. Besides, a typical machine-learning-based approach may miss objects because they could not be recognized, though they still may pose a danger. Another advantage of our approach is that the imminent danger detector can detect such unrecognizable objects to help users avoid a collision. Finally, experimental results demonstrate that the proposed system can be a useful indoor assistant tool to help blind individuals with collision avoidance and wayfinding.
topic Convolutional neural network
ground segmentation
object detection
point cloud
region of interest
visual impairment
url https://ieeexplore.ieee.org/document/9211506/
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