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Multispectral Information Fusion With Reinforcement Learning for Object Tracking in IoT Edge Devices

机译:具有IOT边缘设备对象跟踪的钢筋信息融合

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摘要

With recent advances in sensor technology, multispectral systems are becoming increasingly attractive for intelligence, surveillance, and reconnaissance applications. Fusing information from multiple imaging modalities is a major task for such systems. Combining feature maps obtained from multiple deep neural network pipelines demonstrates promising performance for object detection and tracking. However, feature fusion using multiple deep networks is computationally intensive and therefore not suitable for resource-constrained IoT edge devices. In this paper, we propose a novel method to fuse the input space to enable processing of multispectral data via a single deep network. We use task-driven feedback as a reward signal for our reinforcement learning-based multispectral input fusion. Proposed approach not only improves tracking accuracy but also maximizes modality-specific information as intended by the user.
机译:随着传感器技术的最新进展,多光谱系统对于智力,监视和侦察应用越来越有吸引力。来自多个成像模式的融合信息是此类系统的主要任务。组合从多个深神经网络管道获得的特征贴图演示了对象检测和跟踪的有希望的性能。但是,使用多个深网络的特征融合是计算密集的,因此不适合资源受限的物联网边缘设备。在本文中,我们提出了一种融合输入空间的新方法,以便通过单个深网络处理多光谱数据。我们使用任务驱动的反馈作为基于强化学习的多光谱输入融合的奖励信号。提出的方法不仅提高了跟踪准确性,而且还提高了用户的模态特定信息。

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