2022
DOI: 10.1038/s41598-022-07898-7
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Object detectors involving a NAS-gate convolutional module and capsule attention module

Abstract: Several state-of-the-art object detectors have demonstrated outstanding performances by optimizing feature representation through modification of the backbone architecture and exploitation of a feature pyramid. To determine the effectiveness of this approach, we explore the modification of object detectors’ backbone and feature pyramid by utilizing Neural Architecture Search (NAS) and Capsule Network. We introduce two modules, namely, NAS-gate convolutional module and Capsule Attention module. The NAS-gate con… Show more

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Cited by 5 publications
(1 citation statement)
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“…In addition, the integrated progressive shrinking strategy to facilitate dynamic distillation allows the elastic teacher pool to be trained, and thus teacher detectors can be sampled without additional costs in the subsequent searches. In a 2022 study, Viriyasaranon et al [ 98 ] proposed NASGC-CapANet, designed to explore the backbone of object detectors and the feature pyramid representations using NAS and the capsule network. In the study, the NAS-gate convolutional module and the capsule attention module were introduced.…”
Section: Nas For CVmentioning
confidence: 99%
“…In addition, the integrated progressive shrinking strategy to facilitate dynamic distillation allows the elastic teacher pool to be trained, and thus teacher detectors can be sampled without additional costs in the subsequent searches. In a 2022 study, Viriyasaranon et al [ 98 ] proposed NASGC-CapANet, designed to explore the backbone of object detectors and the feature pyramid representations using NAS and the capsule network. In the study, the NAS-gate convolutional module and the capsule attention module were introduced.…”
Section: Nas For CVmentioning
confidence: 99%