Lane-Based Front Vehicle Detection and Its Acceleration

碩士 === 國立中山大學 === 資訊工程學系研究所 === 101 === Based on .Net Framework4.0 development platform and Visual C# language, this thesis presents various methods of performing lane detection and preceding vehicle detection/tracking with code optimization and acceleration to reduce the execution time. The thesis...

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Main Authors: Jie-Qi Chen, 陳傑琪
Other Authors: Shen-Fu Hsiao
Format: Others
Language:zh-TW
Published: 2013
Online Access:http://ndltd.ncl.edu.tw/handle/64654670123602995616
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spelling ndltd-TW-101NSYS53920142015-10-13T22:40:31Z http://ndltd.ncl.edu.tw/handle/64654670123602995616 Lane-Based Front Vehicle Detection and Its Acceleration 基於車道線辨識之前車偵測及加速 Jie-Qi Chen 陳傑琪 碩士 國立中山大學 資訊工程學系研究所 101 Based on .Net Framework4.0 development platform and Visual C# language, this thesis presents various methods of performing lane detection and preceding vehicle detection/tracking with code optimization and acceleration to reduce the execution time. The thesis consists of two major parts: vehicle detection and tracking. In the part of detection, driving lanes are identified first and then the preceding vehicles between the left lane and right lane are detected using the shadow information beneath vehicles. In vehicle tracking, three-pass search method is used to find the matched vehicles based on the detection results in the previous frames. According to our experiments, the preprocessing (including color-intensity conversion) takes a significant portion of total execution time. We propose different methods to optimize the code and speed up the software execution using pure C # pointers, OPENCV, and OPENCL etc. Experimental results show that the fastest detection/tracking speed can reach more than 30 frames per second (fps) using PC with i7-2600 3.4Ghz CPU. Except for OPENCV with execution rate of 18 fps, the rest of methods have up to 28 fps processing rate of almost the real-time speed. We also add the auxiliary vehicle information, such as preceding vehicle distance and vehicle offset warning. Shen-Fu Hsiao 蕭勝夫 2013 學位論文 ; thesis 106 zh-TW
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description 碩士 === 國立中山大學 === 資訊工程學系研究所 === 101 === Based on .Net Framework4.0 development platform and Visual C# language, this thesis presents various methods of performing lane detection and preceding vehicle detection/tracking with code optimization and acceleration to reduce the execution time. The thesis consists of two major parts: vehicle detection and tracking. In the part of detection, driving lanes are identified first and then the preceding vehicles between the left lane and right lane are detected using the shadow information beneath vehicles. In vehicle tracking, three-pass search method is used to find the matched vehicles based on the detection results in the previous frames. According to our experiments, the preprocessing (including color-intensity conversion) takes a significant portion of total execution time. We propose different methods to optimize the code and speed up the software execution using pure C # pointers, OPENCV, and OPENCL etc. Experimental results show that the fastest detection/tracking speed can reach more than 30 frames per second (fps) using PC with i7-2600 3.4Ghz CPU. Except for OPENCV with execution rate of 18 fps, the rest of methods have up to 28 fps processing rate of almost the real-time speed. We also add the auxiliary vehicle information, such as preceding vehicle distance and vehicle offset warning.
author2 Shen-Fu Hsiao
author_facet Shen-Fu Hsiao
Jie-Qi Chen
陳傑琪
author Jie-Qi Chen
陳傑琪
spellingShingle Jie-Qi Chen
陳傑琪
Lane-Based Front Vehicle Detection and Its Acceleration
author_sort Jie-Qi Chen
title Lane-Based Front Vehicle Detection and Its Acceleration
title_short Lane-Based Front Vehicle Detection and Its Acceleration
title_full Lane-Based Front Vehicle Detection and Its Acceleration
title_fullStr Lane-Based Front Vehicle Detection and Its Acceleration
title_full_unstemmed Lane-Based Front Vehicle Detection and Its Acceleration
title_sort lane-based front vehicle detection and its acceleration
publishDate 2013
url http://ndltd.ncl.edu.tw/handle/64654670123602995616
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