Application Study of Blind Spot Monitoring System Realized by Monocular Camera with CNN Depth Cues Extraction Approach

Authors Abstract
Content
The image from monocular camera is processed to detect depth information of the obstacles viewed by the rearview cameras of vehicle door side. The depth information recognized from a single, two-dimensional image data can be used for the purpose of blind spot area detection. Blind spot detection is contributing to enhance the vehicle safety in scenarios such as lane-change and overtaking driving. In this article the depth cue information is inferred from the feature comparison between two image blocks selected within a single image. Convolutional neural network model trained by deep learning process with good enough accuracy is applied to distinguish if an obstacle is far or near for a specified threshold in the vehicle blind spot area. The application study results are demonstrated by the offline calculations with real traffic image data.
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DOI
https://doi.org/10.4271/12-02-04-0016
Pages
21
Citation
Guo, Y., Kumazawa, I., and Kaku, C., "Application Study of Blind Spot Monitoring System Realized by Monocular Camera with CNN Depth Cues Extraction Approach," SAE Intl. J CAV 2(4):219-232, 2019, https://doi.org/10.4271/12-02-04-0016.
Additional Details
Publisher
Published
Dec 17, 2019
Product Code
12-02-04-0016
Content Type
Journal Article
Language
English