A Recognition Method for Multi-object Information Based on Multi-source Data Fusion

Zhengfan Zhao, Rongxing Wu, G. Nie, Bin Liu, Xun Li
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引用次数: 0

Abstract

The accuracy of object recognition is difficult to be improved by single information acquisition, we propose a recognition method for multi-object information based on multi-source data Fusion. By analyzing the high-level semantic features of RGB images and Depth images, feature fusion module is added, then, the calculation of parameters of the model is reduced based on the idea of residual learning. Combined with the GRU recursive neural network, a tighter feature sequence is to generated, which improved the accuracy of RGB-D object recognition. Finally, improved method has been experimented on multiple public data sets, the results show that the object recognition method in this paper integrates depth information, Compared with single RGB image, the recognition accuracy is significantly improved; Compared with other RGB-D-oriented deep learning methods, the recognition accuracy of the method in the article has been significantly improved by at least 2.5% in 2D3D dataset.
基于多源数据融合的多目标信息识别方法
针对单一信息采集难以提高目标识别精度的问题,提出了一种基于多源数据融合的多目标信息识别方法。结合GRU递归神经网络,生成更紧密的特征序列,提高了RGB-D目标识别的精度。最后,对改进后的方法在多个公开数据集上进行了实验,结果表明,本文的目标识别方法集成了深度信息,与单一RGB图像相比,识别精度显著提高;与其他面向rgb - d的深度学习方法相比,本文方法在2D3D数据集上的识别准确率至少提高了2.5%。
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