Object Detection Based on Multi-Channel Deep CNN

Bo Zhao, Lin Zhu, Zhiyang Ma, Juyan Ni, Qing Lin, Li-Yu Daisy Liu
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引用次数: 2

Abstract

Object detection under complex background is a very challenge problems, because it might be very difficult to discriminate target and its background even for human eyes. Thanks to the application of deep learning to object detection, the detection performances have improved a lot year by year. In the paper, we propose an object detection framework based on image fusion using visible image, infrared image and motion image to form three-channel input image. Furthermore, we build a 53-layers neural network by using fused image as input. Cross-domain transfer learning technique is used to train the network on large-scale IMAGENET datasets firstly, then the network is fine-tuned on the small-scale collected image datasets. Both quantitatively and qualitatively experiments are conducted to demonstrate the robustness of our method while maintaining real-time performance.
基于多通道深度CNN的目标检测
复杂背景下的目标检测是一个非常具有挑战性的问题,因为人眼很难区分目标和背景。由于深度学习在物体检测中的应用,检测性能逐年提高。本文提出了一种基于图像融合的目标检测框架,利用可见光图像、红外图像和运动图像组成三通道输入图像。在此基础上,以融合图像为输入,构建了一个53层的神经网络。首先利用跨域迁移学习技术在大规模IMAGENET数据集上对网络进行训练,然后在小规模采集的图像数据集上对网络进行微调。定量和定性实验都证明了我们的方法在保持实时性能的同时具有鲁棒性。
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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