Medical Image Diagnosis with Deep Learning on FPGA Platform

In recent, cancer has become a major public health problem and the leading cause of death. Therefore, early screening and accurate diagnosis of cancer are extremely important. With the development of medical image equipment, image diagnosis has made great contributions to the improvement of the medical standard. In this paper, the deep learning algorithm is applied to the computer-aided detection, so that the structure of the medical image detection can meet the practical requirements. Moreover, we have tried to implement the deep learning algorithm on FPGA, which can improve the performance effectively with compared to GPU and CPU architectures.

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