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首页> 外文期刊>Journal of neurosurgical sciences >Multi-spectral Pedestrian Detection via Image Fusion and Deep Neural Networks
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Multi-spectral Pedestrian Detection via Image Fusion and Deep Neural Networks

机译:通过图像融合和深神经网络的多光谱行人检测

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The use of multi-spectral imaging has been found to improve the accuracy of deep neural network-based pedestrian detection systems, particularly in challenging night time conditions in which pedestrians are more clearly visible in thermal long-wave infrared bands than in plain RGB. In this article, the authors use the Spectral Edge image fusion method to fuse visible RGB and IR imagery, prior to processing using a neural network-based pedestrian detection system. The use of image fusion permits the use of a standard RGB object detection network without requiring the architectural modifications that are required to handle multi-spectral input. We contrast the performance of networks trained using fused images to those that use plain RGB images and networks that use a multi-spectral input. (C) 2018 Society for Imaging Science and Technology.
机译:已经发现使用多光谱成像来提高基于深神经网络的行人检测系统的准确性,特别是在挑战夜间条件下,在普通RGB中,行人在热长波红外频带中更清晰可见。 在本文中,作者在使用基于神经网络的行人检测系统的处理之前,使用光谱边缘图像融合方法来保险熔断可见的RGB和IR图像。 使用图像融合允许使用标准RGB对象检测网络,而无需要求处理多频谱输入所需的架构修改。 我们对比使用融合图像训练的网络的性能与使用多光谱输入的普通RGB图像和网络的网络性能。 (c)2018年成像科技协会。

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