Giải pháp thống kê phương tiện giao thông sử dụng camera

  • Trần Nguyên Ngọc phó chủ nhiệm BM KHMT, khoa CNTT, Học viện KTQS,
  • Hoàng Anh Tuấn
  • Từ Minh Phương

Abstract

This paper proposes a solution for vehicle counting using camera as a sensor. We also present a novel texture feature that is a modified version of the well-known Local Binary Pattern (LBP) feature. The experimental results are evaluated on a data set collected in the intersection of Ly Tu Trong – Pasteur, Ho Chi Minh City at various times. The proposed solution achived an accuracy of car counting from 90% to 97%, and accuracy of motorcycle counting over 75% during the day and over 50 % at night.

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Published
2016-07-06
Section
Bài báo