识别任务的两阶段流水线算法——以车牌识别为例

Jia-Ming Yeh, Garnett Chang, Jason P Lee, Wei-Yang Lin
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引用次数: 0

摘要

虽然关于深度学习的研究很多,但大多数都是使用GPU平台来运行深度网络模型。然而,由于GPU相对较高的成本和高功耗,在实际场景中使用GPU是不太可取的。为了避免上述问题,本文提出了一种适合FPGA平台的两阶段流水线算法(TSPA)。我们还将OpenCV和GStreamer结合在一起,使FPGA平台在保持令人满意的精度的同时实现实时性能。以车牌识别为例,验证了该方法的可行性。我们利用AOLP数据集和自己收集的视频进行了实验。我们提出的方法在这些视频上取得了令人满意的效果。
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A Two-Stage Pipelined Algorithm for Recognition Tasks: Using License Plate Recognition as an Example
Although there has been a lot of research on deep learning, most of them use GPU platform to run deep network models. However, it is less desirable to utilize GPU in real-world scenarios due its relatively high cost and high power consumption. In this paper, we propose a two-stage pipelined algorithm (TSPA) suitable for the FPGA platform to avoid the above-mentioned issues. We also combine OpenCV and GStreamer so that the FPGA platform can achieve real-time performance while maintaining satisfactory accuracy. We choose license plate recognition as an example to demonstrate the feasibility of our proposed approach. We have conducted experiments using the AOLP dataset and the self-collected videos. Our proposed method achieves promising results on these videos.
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