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Performance Analysis of Multi-level HAAR in Background Removal for Object Detection

机译:多级HAAR在背景去除中的目标检测性能分析

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Objective: This study proposes performance improvement in speed of multi-level HAAR processed images for object detection. Method: Background subtraction algorithm is implemented using phase as a feature to reduce illumination variation. The algorithm is implemented on level 2 and level 3 HAAR compressed images. Simulation results are obtained on kit ware database. Findings: Simulation results show that object detection is faster in level 3 HAAR compressed images as compared to level 2 and level 1 HAAR compressed images. Average time required for processing single frame is in range of 6.53 to 29.22 ms in level 3 while that in level 2 is 6.65 to 36.46 ms. Improvement: Using this approach saving of 5% to 22% of processing time is observed at level 2 of HAAR while a saving of 9% to 48% of time is observed at level 3 of HAAR.
机译:目的:本研究提出了用于对象检测的多级HAAR处理图像的速度性能改进。方法:以相位为特征来实现背景减影算法,以减少照明变化。该算法在2级和3级HAAR压缩图像上实现。仿真结果在套件商品数据库中获得。结果:仿真结果表明,与2级和1级HAAR压缩图像相比,3级HAAR压缩图像中的对象检测更快。在级别3中处理单个帧所需的平均时间在6.53到29.22 ms的范围内,而在级别2中则是6.65到36.46 ms。改进:使用此方法,在HAAR的级别2上可节省5%至22%的处理时间,而在HAAR的级别3上可节省9%至48%的时间。

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