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Enhancing the implementation of Adaboost Algorithm on a DSP-based Platform

机译:增强基于DSP的平台的Adaboost算法的实现

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Adaboost algorithm for face detection in real-time is difficult to implement due to its significant computational complexity and memory requirements in terms of stringent memory bandwidth and huge memory volume. In this paper, we present two aspects of improvements in implementing the Adaboost algorithm, i.e. platform specific optimization on a DSP platform (TI's TMS320DM642); and algorithm specific optimization including optimized cascade training, floating-point to fixed-point conversion (FFC) and scaling image. In the process of platform specific optimization, software pipeline, loop unrolling and writing liner assembly code is fulfilled. With these enhancements, we show in experimental results that the implemented system can detect human faces in real-time at a frame rate of 25 fps with little loss of correct detection rate. In our implementation, we further decrease the false detection rate, and dramatically reduce memory bandwidth and memory size required.
机译:由于其在严格的内存带宽和巨大的内存卷方面,因此难以实现实时脸部检测的ADABOOST算法。在本文中,我们介绍了实现Adaboost算法的改进的两个方面,即DSP平台上的平台特定优化(TI的TMS320DM642);和算法特定优化,包括优化的级联训练,浮点对固定点转换(FFC)和缩放图像。在平台的过程中,满足软件流水线,展开循环展开和写入衬垫汇编代码。通过这些增强功能,我们在实验结果中显示了所实施的系统可以以25 FP的帧速率实时检测人类面,几乎没有损失正确的检测率。在我们的实施中,我们进一步降低了假检测率,并大大减少了所需的内存带宽和内存大小。

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