Multi-modal Feature Fusion 3D Object Detection

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Abstract

For the existing 3D small object detection is prone to false detection and missed detection and other deficiencies. A 3D object detection method based on multi-modal feature fusion is proposed. Firstly, a feature extraction module is designed. The input image data is down-sampled through the image feature extraction network, and the input point cloud data is sampled and grouped through the point cloud feature extraction network to obtain the feature information at different scales. Secondly, a multi-modal feature fusion module is constructed to realize the point correspondence between point cloud features and image features by projection operation, and then the image features and point cloud features are splicing and fused to generate the final point cloud features to compensate the deficiency of single modal feature information. The experimental results show that compared with the existing algorithms, the algorithm in this paper improves the average detection accuracy of small object by 2.03%.
多模态特征融合3D目标检测
针对现有的3D小目标检测容易出现误检和漏检等缺陷。提出了一种基于多模态特征融合的三维目标检测方法。首先,设计了特征提取模块。通过图像特征提取网络对输入的图像数据进行下采样,通过点云特征提取网络对输入的点云数据进行采样分组,获得不同尺度的特征信息。其次,构建多模态特征融合模块,通过投影运算实现点云特征与图像特征的点对应,然后将图像特征与点云特征拼接融合生成最终的点云特征,弥补单模态特征信息的不足;实验结果表明,与现有算法相比,本文算法对小目标的平均检测精度提高了2.03%。
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