标题: | 以混合深度学习方法加速嵌入式系统之物件侦测 A Hybrid Deep Learning Method of Fast Object Detection for Embedded System |
作者: | 陈冠任 曹孝栎 Chen, Guan-Ren Tsao, Shiao-Li 资讯科学与工程研究所 |
关键字: | 嵌入式系统;物件侦测;embedded system;object detection |
公开日期: | 2017 |
摘要: | 现今有许多电脑视觉在嵌入式系统上的应用,然而电脑视觉的应用需要大量的计算及功耗,这并不乐见于嵌入式系统。一般而言,使用者在不同应用程式、不同的情境下对于效能及功耗有不同的需求,因此我们想要量测不同演算法在不同平台下效能、功耗和准确度的特性,并透过我们的结果提供使用者一些平台和演算法选择上的建议。 本研究建立一个以耗能(Power)、准确度(Accuracy)以及帧率(FPS)所组成的三维图,提供使用者在不同情境下的选择,并进一步从微观的角度,利用影像前后帧(frame)之间差异不大的特性,我们挑选出一个辨识准确度较低但辨识时间较短的演算法以及一个辨识准确度较高但辨识时间较长的演算法,让影像的每帧穿插使用两演算法,并且以准确度高的结果对准确度低的结果进行修正,进而达到准确度接近准确度较高的演算法但其执行时间大幅缩短的效果。 Nowadays, there are a plenty of the computer vision applications on embedded system. However, it is not good to run computer vision applications on embedded systems which will take much computation and power consumption. This study aims to measure the power consumption, the accuracy and the performance of different algorithm running on different platform to give the suggestion of choosing algorithm on the platform so to meet the request of the performance and power consumption for different applications in different situation. In this thesis, we build a 3D plot which composed by power, accuracy and FPS. Further, from microscopic point of view, we choose one higher accuracy but slower detection algorithm and one lower accuracy but faster detection algorithm. Since video has the characteristics that the frame in video will be similar to its next frame, we run these two detection algorithm on the video frames alternatively and use the result produced by higher accuracy algorithm to correct the result produced by lower accuracy algorithm so that we can achieve the result that the accuracy is close to the higher accuracy algorithm but its execution time significantly shortened. |
URI: | http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070456065 http://hdl.handle.net/11536/142359 |
显示于类别: | Thesis |