首页> 外文期刊>IEICE Transactions on fundamentals of electronics, communications & computer sciences >A Hardware Implementation on Customizable Embedded DSP Core for Colorectal Tumor Classification with Endoscopic Video toward Real-Time Computer-Aided Diagnosais System
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A Hardware Implementation on Customizable Embedded DSP Core for Colorectal Tumor Classification with Endoscopic Video toward Real-Time Computer-Aided Diagnosais System

机译:基于内窥镜视频的可定制嵌入式 DSP 内核对结直肠肿瘤分类的硬件实现,面向实时计算机辅助诊断系统

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摘要

In this paper, we present a hardware implementation of a colorectal cancer diagnosis support system using a colorectal endoscopic video image on customizable embedded DSP. In an endoscopic video image, color shift, blurring or reflection of light occurs in a lesion area, which affects the discrimination result by a computer. Therefore, in order to identify lesions with high robustness and stable classification to these images specific to video frame, we implement a computer-aided diagnosis (CAD) system for colorectal endoscopic images with Narrow Band Imaging (NBI) magnification with the Convolutional Neural Network (CNN) feature and Support Vector Machine (SVM) classification. Since CNN and SVM need to perform many multiplication and accumulation (MAC) operations, we implement the proposed hardware system on a customizable embedded DSP, which can realize at high speed MAC operations and parallel processing with Very Long Instruction Word (VLIW). Before implementing to the customizable embedded DSP, we profile and analyze processing cycles of the CAD system and optimize the bottlenecks. We show the effectiveness of the real-time diagnosis support system on the embedded system for endoscopic video images. The prototyped system demonstrated real-time processing on video frame rate (over 30 fps @ 200 MHz) and more than 90 accuracy.
机译:在本文中,我们介绍了在可定制的嵌入式 DSP 上使用结直肠内窥镜视频图像的结直肠癌诊断支持系统的硬件实现。在内窥镜视频图像中,病变区域发生色偏、模糊或光反射,这会影响计算机的判别结果。因此,为了识别具有高鲁棒性和稳定分类的病变,我们实现了具有窄带成像 (NBI) 放大倍率的结直肠内窥镜图像计算机辅助诊断 (CAD) 系统,具有卷积神经网络 (CNN) 特征和支持向量机 (SVM) 分类。由于 CNN 和 SVM 需要执行许多乘法和累加 (MAC) 运算,因此我们在可定制的嵌入式 DSP 上实现了所提出的硬件系统,该系统可以实现高速 MAC 运算和超长指令字 (VLIW) 的并行处理。在实施到可定制的嵌入式DSP之前,我们会对CAD系统的处理周期进行剖析和分析,并优化瓶颈。我们展示了实时诊断支持系统在嵌入式系统上对内窥镜视频图像的有效性。原型系统展示了视频帧速率(超过 30 fps @ 200 MHz)的实时处理和超过 90% 的准确率。

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