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Publication | Open Access

MRI-based brain tumor segmentation using FPGA-accelerated neural network

50

Citations

24

References

2021

Year

Abstract

We quantize and retrain the neural network for brain tumor segmentation and merge batch normalization layers to reduce the parameter size and computational complexity. The FPGA-based brain tumor segmentation accelerator is designed to map the quantized neural network model. The accelerator can increase the segmentation speed and reduce the power consumption on the basis of ensuring high accuracy which provides a new direction for the automatic segmentation and remote diagnosis of brain tumors.

References

YearCitations

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