2022 Design, Automation &Amp; Test in Europe Conference &Amp; Exhibition (DATE) 2022
DOI: 10.23919/date54114.2022.9774615
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TAS: Ternarized Neural Architecture Search for Resource-Constrained Edge Devices

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Cited by 9 publications
(3 citation statements)
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“…In DARTS, the type of each cell is either a normal cell for feature extraction or a reduction cell for both feature extraction and dimension reduction. After designing the optimal cell, we assemble the final network by stacking 18 normal cells with two reduction cells, where every six normal cells are followed by one reduction cell [37]. Last, the final architecture is re-trained from scratch to fine-tune the network parameters.…”
Section: Cnn Architecture Searchmentioning
confidence: 99%
“…In DARTS, the type of each cell is either a normal cell for feature extraction or a reduction cell for both feature extraction and dimension reduction. After designing the optimal cell, we assemble the final network by stacking 18 normal cells with two reduction cells, where every six normal cells are followed by one reduction cell [37]. Last, the final architecture is re-trained from scratch to fine-tune the network parameters.…”
Section: Cnn Architecture Searchmentioning
confidence: 99%
“…cell for feature extraction or a reduction cell for both feature extraction and dimension reduction. After designing the optimal cell, we assemble the final network by stacking 18 normal cells with two reduction cells, where every six normal cells are followed by one reduction cell [37]. Last, the final architecture is re-trained from scratch to fine-tune the network parameters.…”
Section: Cnn Architecture Searchmentioning
confidence: 99%
“…In latency-sensitive systems, like autonomous driving and drone tracking, strict response time requirements must be satisfied. TAS [13] and DASS [14] have designed methods that combine quantization with NAS, and pruning with NAS, respectively. The goal of these methods is to reduce memory cost and speed up inference.…”
Section: Introductionmentioning
confidence: 99%