利用 DETR 和多个自协调神经网络进行枪支探测

Romulo Augusto Aires Soares, Alexandre Cesar Muniz de Oliveira, Paulo Rogerio de Almeida Ribeiro, Areolino de Almeida Neto
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摘要

本文提出了一种新策略,利用多个神经网络结合 DETR(DEtection TRansformer)网络来检测监控图像中的枪支。这项工作中开发的策略提出了一种方法,通过无需协调者的多自协调人工神经网络(MANN)技术,促进 DETR 全连接层中网络的协作和自协调。这种自协调包括一个接一个地训练网络,并整合其输出,而无需额外的协调器。结果表明,所提议的网络非常有效,在枪支检测方面取得了高水平的成果。值得注意的是,该网络的精确度高达 84%,并且能够进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Firearm detection using DETR with multiple self-coordinated neural networks

This paper presents a new strategy that uses multiple neural networks in conjunction with the DEtection TRansformer (DETR) network to detect firearms in surveillance images. The strategy developed in this work presents a methodology that promotes collaboration and self-coordination of networks in the fully connected layers of DETR through the technique of multiple self-coordinating artificial neural networks (MANN), which does not require a coordinator. This self-coordination consists of training the networks one after the other and integrating their outputs without an extra element called a coordinator. The results indicate that the proposed network is highly effective, achieving high-level outcomes in firearm detection. The network’s high precision of 84% and its ability to perform classifications are noteworthy.

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