Red grape detection with accelerated artificial neural networks in the FPGA's programmable logic
Red grape detection with accelerated artificial neural networks in the FPGA's programmable logic
Robots usually slow down for canning to detect objects while moving. Additionally, the robot's camera is configured with a low framerate to track the velocity of the detection algorithms. This would be constrained while executing tasks and exploring, making robots increase the task execution time. AMD has developed the Vitis-AI framework to deploy detection algorithms into FPGAs. However, this tool does not fully use the FPGAs' PL. In this work, we use the FINN architecture to deploy three ANNs, MobileNet v1 with 4-bit quantisation, CNV with 2-bit quantisation, and CNV with 1-bit quantisation (BNN), inside an FPGA's PL. The models were trained on the RG2C dataset. This is a self-acquired dataset released in open access. MobileNet v1 performed better, reaching a success rate of 98 % and an inference speed of 6611 FPS. In this work, we proved that we can use FPGAs to speed up ANNs and make them suitable for attention mechanisms.
Sandro Costa Magalhães、Marco Almeida、Filipe Neves dos Santos、António Paulo Moreira、Jorge Dias
半导体技术微电子学、集成电路电子技术应用
Sandro Costa Magalhães,Marco Almeida,Filipe Neves dos Santos,António Paulo Moreira,Jorge Dias.Red grape detection with accelerated artificial neural networks in the FPGA's programmable logic[EB/OL].(2025-07-03)[2025-07-16].https://arxiv.org/abs/2507.02443.点此复制
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