2023
DOI: 10.3390/electronics12194085
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FPQNet: Fully Pipelined and Quantized CNN for Ultra-Low Latency Image Classification on FPGAs Using OpenCAPI

Mengfei Ji,
Zaid Al-Ars,
Peter Hofstee
et al.

Abstract: Convolutional neural networks (CNNs) are to be effective in many application domains, especially in the computer vision area. In order to achieve lower latency CNN processing, and reduce power consumption, developers are experimenting with using FPGAs to accelerate CNN processing in several applications. Current FPGA CNN accelerators usually use the same acceleration approaches as GPUs, where operations from different network layers are mapped to the same hardware units working in a multiplexed manner. This wi… Show more

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Cited by 1 publication
(1 citation statement)
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“…The NN model architecture design has been based on some well-known CNNs in the literature, which have also been implemented on FPGAs [27]. One of them is the LeNet-5 model, a modification of the classic LeNet [28], which has been used in many application scenarios, like medical diagnosis [29], signal processing [30], or image segmentation [31].…”
Section: Model Architecture Designmentioning
confidence: 99%
“…The NN model architecture design has been based on some well-known CNNs in the literature, which have also been implemented on FPGAs [27]. One of them is the LeNet-5 model, a modification of the classic LeNet [28], which has been used in many application scenarios, like medical diagnosis [29], signal processing [30], or image segmentation [31].…”
Section: Model Architecture Designmentioning
confidence: 99%