循环对抗生成网络方法在内外场映射中应用

Application of Cycle Generative Adversarial Network Method in Internal and External Field Mapping

  • 摘要: 针对传统图像生成平台所模拟的仿真图像和外场实拍图像风格相差较大、逼真度不够高等问题,为满足图像制导武器在半实物仿真试验中模拟的仿真图像更加接近真实战场环境,提出了循环对抗生成网络的方法。该网络由生成器和判别器构成,该方法是一种无监督的深度学习模型,嵌入现有图像生成平台。为保证实时性,采用有锁共享内存技术,解决了在半实物中图像传输超时的问题。试验结果表明:该方法用于半实物仿真中既保证了实时性又提高了置信度。

     

    Abstract: To address the vastly different styles and insufficiently high fidelity of simulation images simulated by the conventional image-generation platform, a cycle generative adversarial network is proposed. This enables the simulated image in the semi-physical simulation test of an image-guided weapon to closely resemble the actual battlefield environment. The proposed network comprises generators and discriminators, and the method involves an unsupervised deep-learning model embedded in existing image-generation platforms. To ensure real-time performance, locking shared memory technology is used to address image transmission timeouts in semi-physical objects. Test results show that the method can ensure real-time performance and improve confidence in semi-physical simulations.

     

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