A BNN-based YOLOv3-tiny-like object detector with 1-bit weights and 8-bit activations is implemented in Verilog on FPGA, achieving 39.6% mAP50 on VOC and 0.999964 correlation with the ONNX model in RTL simulation.
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Design and Implementation of BNN-Based Object Detection on FPGA
A BNN-based YOLOv3-tiny-like object detector with 1-bit weights and 8-bit activations is implemented in Verilog on FPGA, achieving 39.6% mAP50 on VOC and 0.999964 correlation with the ONNX model in RTL simulation.