作者
Ho Kwan Leung, Xiu-Zhi Chen, Chao-Wei Yu, Hong-Yi Liang, Jian-Yi Wu, Yen-Lin Chen
发表日期
2019/11/8
期刊
Applied Sciences
卷号
9
期号
22
页码范围
4769
出版商
MDPI
简介
Featured Application
This paper proposes a deep-learning-based vehicle detection technique that can achieve effective detection performance under extreme illumination conditions. The technique can be used in on-road driver assistance tools and autonomous vehicles.
Abstract
Most object detection models cannot achieve satisfactory performance under nighttime and other insufficient illumination conditions, which may be due to the collection of data sets and typical labeling conventions. Public data sets collected for object detection are usually photographed with sufficient ambient lighting. However, their labeling conventions typically focus on clear objects and ignore blurry and occluded objects. Consequently, the detection performance levels of traditional vehicle detection techniques are limited in nighttime environments without sufficient illumination. When objects occupy a small number of pixels and the existence of crucial features is infrequent, traditional convolutional neural networks (CNNs) may suffer from serious information loss due to the fixed number of convolutional operations. This study presents solutions for data collection and the labeling convention of nighttime data to handle various types of situations, including in-vehicle detection. Moreover, the study proposes a specifically optimized system based on the Faster region-based CNN model. The system has a processing speed of 16 frames per second for 500 × 375-pixel images, and it achieved a mean average precision (mAP) of 0.8497 in our validation segment involving urban nighttime and extremely inadequate lighting …
引用总数
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