一种基于多路径深度全卷积神经网络的视觉里程计算法

Bo Chen, Kun Yan, Rongchuan Cao, Tianqi Zhang, Xiaoli Zhang
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引用次数: 0

摘要

视觉里程计是自动驾驶领域的关键核心技术之一。然而,在低光或光照不均匀的场景中拍摄的图像,由于图像对比度低,缺乏细节特征,仍然不能保证良好的性能。因此,本文提出了一种基于图像融合和FCNN-LSTM的端到端视觉里程计方法。通过灰度变换得到源图像序列的亮度图像,设计了一种基于谱残差理论的图像融合算法,将图像序列与其亮度图像结合起来,增强图像的对比度,提供更详细的信息。为了提高图像特征提取的精度,减小姿态估计过程中的误差,设计了一种基于跳跃融合- fcnn的特征提取算法。对传统的全卷积神经网络(FCNN)进行了改进,提出了一种跳跃融合-FCNN网络模型,并构造了三条不同的路径进行特征提取。在每条路径上,对不同深度的预测结果进行下采样融合,得到特征映射。同时考虑图像的结构信息和细节信息,合并三个不同的特征映射,获得特征融合信息。实验表明,该算法优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new visual odometry algorithm based on multi-path deep fully convolutional neural networks
Visual odometry is one of the key core technologies in the field of autonomous driving. However, images captured in lowlight or unevenly-illuminated scenes still cannot guarantee good performance due to low image contrast and lack of detail features. Therefore, we propose an end-to-end visual odometry method based on image fusion and FCNN-LSTM in the paper. The brightness image of the source image sequence is obtained by gray-scale transformation, and an image fusion algorithm based on spectral residual theory is designed to combine the image sequence and its brightness image to enhance the contrast of the image and provide more detailed information. In order to improve the accuracy of image feature extraction and reduce the error in the pose estimation process, we design a feature extraction algorithm based on skipfusion-FCNN. The traditional fully convolutional neural network (FCNN) is improved, a skip-fusion-FCNN network model is proposed, and three different paths are constructed for feature extraction. In each path, the prediction results of different depths are fused by downsampling to obtain a feature map. Merge three different feature maps to obtain feature fusion information, taking into account the structural information and detail information of the image. Experiments show that this algorithm is superior to the state-of-the-art algorithms.
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