ODRP: a new approach for spatial street sign detection from EXIF using deep learning-based object detection, distance estimation, rotation and projection system

被引:0
|
作者
Murat Taşyürek
机构
[1] Kayseri University,Department of Computer Engineering
关键词
Geographical information systems; Spatial detection; Street plate; Exchangeable image file; Spatial estimation with deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
Geographical information systems (GIS) are the systems where spatial data are stored and analyzed. The most important raw material in GIS is spatial data. Thus, it is essential to collect and update these data. On the other hand, exchangeable image file (EXIF) format is a special file format that contains camera direction, date-time information and GPS location provided by a digital camera that captures the images. Transferring the objects in EXIF data sets with absolute coordinates on the earth significantly contributes to GIS. In this study, a new hybrid approach, ODPR, which utilizes object detection (O), distance estimation (D), rotation (R) and projection (P) methods, is proposed to detect street sign objects in EXIF with their locations. The performance of the proposed approach has been examined on the natural EXIF data sets obtained from the Kayseri Metropolitan Municipality. In the proposed approach, a deep learning method detects a street sign object in the EXIF. Then, the object’s distance is calculated at the point where the photograph is taken. Finally, the spatial location of the detected object on the earth is calculated using distance, direction and GPS data with rotation and projection methods. In the proposed ODRP approach, the performances of convolutional neural network (CNN)-based Faster R-CNN, YOLO V5, YOLO V6 and transformer-based DETR models as deep learning models for object detection are examined. The F1 score metric is widely used to examine the performance of methods in deep learning models. The performances of the proposed approaches are reviewed according to the F1 score values, and ODRP Faster R-CNN, YOLO V5, YOLO V6 and DETR approaches achieved F1 scores of 0.909, 0.956, 0.948 and 0.922, respectively. In addition, to overcome the variability of light and background mixing problems, an improved supervised learning method (ISL) is proposed. Thanks to ISL, ODRP Faster R-CNN, YOLO V5, YOLO V6, and DETR approaches have reached 0.965, 0.985, 0.969 and 0.942 f1 scores, respectively. The proposed ODRP Faster R-CNN, YOLO V5, YOLO V6 and DETR approaches found the location of the street sign object to be 11434.76, 12818.39, 12454.63 and 9843.57 ms closer to its position on earth than the classical method, which considers the location of the EXIF, respectively. Regarding time cost, the ODRP Faster R-CNN, YOLO V5, YOLO V6 and DETR analyze EXIF data at an average of 0.99, 0.42, 0.41 and 0.53 s, respectively. The run time of the ODRP YOLO V5 and V6 approaches is almost equal to each other, and it works approximately 2.5 times faster than the ODRP Faster R-CNN method. Consequently, ODRP YOLO V5 outperforms ODRP Faster R-CNN, YOLO V6 and DETR for detecting the spatial location of street sign objects in EXIF and the F1 score.
引用
收藏
页码:983 / 1003
页数:20
相关论文
共 50 条
  • [31] Deep learning-based vehicle detection from orthophoto and spatial accuracy analysis
    Biyik, Muhammed Yahya
    Atik, Muhammed Enes
    Duran, Zaide
    INTERNATIONAL JOURNAL OF ENGINEERING AND GEOSCIENCES, 2023, 8 (02): : 138 - 145
  • [32] Deep Learning-Based Action Classification Using One-Shot Object Detection
    Yoo, Hyun
    Lee, Seo-El
    Chung, Kyungyong
    CMC-COMPUTERS MATERIALS & CONTINUA, 2023, 76 (02): : 1343 - 1359
  • [33] Object detection and tracking under Complex environment using deep learning-based LPM
    Li, Yundong
    Zhang, Xueyan
    Li, Hongguang
    Zhou, Qichen
    Cao, Xianbin
    Xiao, Zhifeng
    IET COMPUTER VISION, 2019, 13 (02) : 157 - 164
  • [34] A Moving Object Detection Method Using Deep Learning-Based Wireless Sensor Networks
    Zhao, Linghua
    Huang, Zhihua
    COMPLEXITY, 2021, 2021
  • [35] Automated Polyp Detection System in Colonoscopy using Object Detection Algorithm based on Deep Learning
    Lee J.-N.
    Cho H.-C.
    Transactions of the Korean Institute of Electrical Engineers, 2021, 70 (01): : 152 - 157
  • [36] Fracture Detection in Wrist X-ray Images Using Deep Learning-Based Object Detection Models
    Hardalac, Firat
    Uysal, Fatih
    Peker, Ozan
    Ciceklidag, Murat
    Tolunay, Tolga
    Tokgoz, Nil
    Kutbay, Ugurhan
    Demirciler, Boran
    Mert, Fatih
    SENSORS, 2022, 22 (03)
  • [37] Deep Learning-Based Man-Made Object Detection from Hyperspectral Data
    Makantasis, Konstantinos
    Karantzalos, Konstantinos
    Doulamis, Anastasios
    Loupos, Konstantinos
    ADVANCES IN VISUAL COMPUTING, PT I (ISVC 2015), 2015, 9474 : 717 - 727
  • [38] Automated prostate cancer grading and diagnosis system using deep learning-based Yolo object detection algorithm
    Salman, Mehmet Emin
    Cakar, Gozde Cakirsoy
    Azimjonov, Jahongir
    Kosem, Mustafa
    Cedimoglu, Ismail Hakki
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 201
  • [39] A Shape-Based Approach for Salient Object Detection Using Deep Learning
    Kim, Jongpil
    Pavlovic, Vladimir
    COMPUTER VISION - ECCV 2016, PT IV, 2016, 9908 : 455 - 470
  • [40] Street Object Detection from Synthesized and Processed Semantic Image: A Deep Learning Based Study
    Parthaw Goswami
    A. B. M. Aowlad Hossain
    Human-Centric Intelligent Systems, 2023, 3 (4): : 487 - 507