首页> 外文OA文献 >Noise-agnostic adaptive image filtering without training references on an evolvable hardware platform
【2h】

Noise-agnostic adaptive image filtering without training references on an evolvable hardware platform

机译:与噪声无关的自适应图像滤波,无需在可演化的硬件平台上训练参考

摘要

One of the main concerns of evolvable and adaptive systems is the need of a training mechanism, which is normally done by using a training reference and a test input. The fitness function to be optimized during the evolution (training) phase is obtained by comparing the output of the candidate systems against the reference. The adaptivity that this type of systems may provide by re-evolving during operation is especially important for applications with runtime variable conditions. However, fully automated self-adaptivity poses additional problems. For instance, in some cases, it is not possible to have such reference, because the changes in the environment conditions are unknown, so it becomes difficult to autonomously identify which problem requires to be solved, and hence, what conditions should be representative for an adequate re-evolution. In this paper, a solution to solve this dependency is presented and analyzed. The system consists of an image filter application mapped on an evolvable hardware platform, able to evolve using two consecutive frames from a camera as both test and reference images. The system is entirely mapped in an FPGA, and native dynamic and partial reconfiguration is used for evolution. It is also shown that using such images, both of them being noisy, as input and reference images in the evolution phase of the system is equivalent or even better than evolving the filter with offline images. The combination of both techniques results in the completely autonomous, noise type/level agnostic filtering system without reference image requirement described along the paper.
机译:演化和自适应系统的主要关注之一是需要一种训练机制,通常通过使用训练参考和测试输入来完成。通过将候选系统的输出与参考进行比较,可以获得在进化(训练)阶段要优化的适应度函数。这种类型的系统可以通过在操作期间进行重新开发来提供适应性,这对于运行时可变条件的应用程序尤其重要。但是,全自动的自我适应性会带来其他问题。例如,在某些情况下,不可能参考,因为环境条件的变化是未知的,因此很难自动确定需要解决的问题,因此,什么条件应该代表充分的重新进化。在本文中,提出并分析了解决此依赖性的解决方案。该系统由映射在可演变的硬件平台上的图像过滤器应用程序组成,该应用程序可以使用来自摄像机的两个连续帧作为测试图像和参考图像进行演化。该系统完全映射在FPGA中,并且将本机动态和部分重新配置用于演进。还显示出使用这样的图像,它们都是嘈杂的,在系统的发展阶段作为输入图像和参考图像等效或什至好于使用离线图像发展滤波器。两种技术的结合导致了完全自主的噪声类型/水平不可知滤波系统,而没有本文中描述的参考图像要求。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号