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Main Authors: Fan, Zhaoxin, Yang, Kaixing, Zhang, Min, Song, Zhenbo, Liu, Hongyan, He, Jun
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2212.11538
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author Fan, Zhaoxin
Yang, Kaixing
Zhang, Min
Song, Zhenbo
Liu, Hongyan
He, Jun
author_facet Fan, Zhaoxin
Yang, Kaixing
Zhang, Min
Song, Zhenbo
Liu, Hongyan
He, Jun
contents Recently, over-height vehicle strike frequently occurs, causing great economic cost and serious safety problems. Hence, an alert system which can accurately discover any possible height limiting devices in advance is necessary to be employed in modern large or medium sized cars, such as touring cars. Detecting and estimating the height limiting devices act as the key point of a successful height limit alert system. Though there are some works research height limit estimation, existing methods are either too computational expensive or not accurate enough. In this paper, we propose a novel stereo-based pipeline named SHLE for height limit estimation. Our SHLE pipeline consists of two stages. In stage 1, a novel devices detection and tracking scheme is introduced, which accurately locate the height limit devices in the left or right image. Then, in stage 2, the depth is temporally measured, extracted and filtered to calculate the height limit device. To benchmark the height limit estimation task, we build a large-scale dataset named "Disparity Height", where stereo images, pre-computed disparities and ground-truth height limit annotations are provided. We conducted extensive experiments on "Disparity Height" and the results show that SHLE achieves an average error below than 10cm though the car is 70m away from the devices. Our method also outperforms all compared baselines and achieves state-of-the-art performance. Code is available at https://github.com/Yang-Kaixing/SHLE.
format Preprint
id arxiv_https___arxiv_org_abs_2212_11538
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle SHLE: Devices Tracking and Depth Filtering for Stereo-based Height Limit Estimation
Fan, Zhaoxin
Yang, Kaixing
Zhang, Min
Song, Zhenbo
Liu, Hongyan
He, Jun
Computer Vision and Pattern Recognition
Recently, over-height vehicle strike frequently occurs, causing great economic cost and serious safety problems. Hence, an alert system which can accurately discover any possible height limiting devices in advance is necessary to be employed in modern large or medium sized cars, such as touring cars. Detecting and estimating the height limiting devices act as the key point of a successful height limit alert system. Though there are some works research height limit estimation, existing methods are either too computational expensive or not accurate enough. In this paper, we propose a novel stereo-based pipeline named SHLE for height limit estimation. Our SHLE pipeline consists of two stages. In stage 1, a novel devices detection and tracking scheme is introduced, which accurately locate the height limit devices in the left or right image. Then, in stage 2, the depth is temporally measured, extracted and filtered to calculate the height limit device. To benchmark the height limit estimation task, we build a large-scale dataset named "Disparity Height", where stereo images, pre-computed disparities and ground-truth height limit annotations are provided. We conducted extensive experiments on "Disparity Height" and the results show that SHLE achieves an average error below than 10cm though the car is 70m away from the devices. Our method also outperforms all compared baselines and achieves state-of-the-art performance. Code is available at https://github.com/Yang-Kaixing/SHLE.
title SHLE: Devices Tracking and Depth Filtering for Stereo-based Height Limit Estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2212.11538