An Efficient Image Denoising Approach Using FPGA Type of PYNQ-Z2

Wesam Hujab Saood, Khamees Khalaf Hasan
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Abstract

Image denoising techniques have become crucial for computer-assisted analysis due to the increasing number of digital images captured in unfavorable conditions. In various fields such as image recognition, medical imaging, robotics, and facial expression analysis, the presence of noise poses significant challenges for denoising algorithms. One of the key difficulties is distinguishing between edges, textures, and noise, all of which contain high-frequency components. Haar Wavelet Transform (HWT) has emerged as a highly effective technique for image denoising. The proposed study focuses on two denoising methods: HWT and HWT-FPGA. Experimental evaluations are conducted to assess the denoising performance of the HWT model and the efficiency of its implementation on a Field-Programmable Gate Array (FPGA). Quantitative metrics, such as Peak Signal-to-Noise Ratio (PSNR) and Mean Square Error (MSE), are used to measure the denoising quality for ten test images of size 255x255 pixels. Additionally, computational metrics, including processing speed and resource utilization, are analyzed to evaluate the efficiency of the FPGA implementation. The research specifically supports PYNQ, an open-source framework that enables embedded programmers to explore the capabilities of Xilinx ZYNQ SoCs without the need for VHDL programming. In this context, the PYNQ-Z2 FPGA development board, based on the ZYNQ XC7Z020 FPGA, is chosen for the proposed system. The experimental results demonstrate that the HWT and HWT-FPGA approach significantly improve denoising performance compared to traditional methods. The denoised images exhibit higher PSNR values and low MSE scores, indicating better preservation of image details and similarity to the clean images. Furthermore, the FPGA implementation showcases remarkable computational efficiency, enabling real-time denoising capabilities while effectively utilizing FPGA resources.
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使用 FPGA 型 PYNQ-Z2 的高效图像去噪方法
由于在不利条件下捕获的数字图像数量不断增加,图像去噪技术已成为计算机辅助分析的关键。在图像识别、医学成像、机器人技术和面部表情分析等多个领域,噪声的存在给去噪算法带来了巨大挑战。其中一个主要难点是区分边缘、纹理和噪声,所有这些都包含高频成分。哈小波变换(HWT)已成为一种高效的图像去噪技术。本研究主要关注两种去噪方法:HWT 和 HWT-FPGA。通过实验评估了 HWT 模型的去噪性能及其在现场可编程门阵列(FPGA)上的实施效率。峰值信噪比(PSNR)和均方误差(MSE)等定量指标用于衡量 10 幅 255x255 像素大小的测试图像的去噪质量。此外,还分析了包括处理速度和资源利用率在内的计算指标,以评估 FPGA 实现的效率。该研究特别支持PYNQ,PYNQ是一个开源框架,可使嵌入式程序员在无需VHDL编程的情况下探索Xilinx ZYNQ SoC的功能。在此背景下,本系统选择了基于 ZYNQ XC7Z020 FPGA 的 PYNQ-Z2 FPGA 开发板。实验结果表明,与传统方法相比,HWT 和 HWT-FPGA 方法显著提高了去噪性能。去噪图像显示出更高的 PSNR 值和更低的 MSE 分数,这表明图像细节得到了更好的保留,并且与干净图像更加相似。此外,FPGA 实现展示了显著的计算效率,在有效利用 FPGA 资源的同时实现了实时去噪功能。
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