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RGB-D Image Multi-Target Detection Method Based on 3D DSF R-CNN

机译:基于3D DSF R-CNN的RGB-D图像多目标检测方法

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摘要

At present, the application of deep learning algorithms in two-dimensional color image detection is being continuously innovated and broken. With the popularity of depth cameras, color image detection methods with depth information need to be upgraded. To solve this problem, a multi-target detection algorithm based on 3D DSF R-CNN (Double Stream Faster R-CNN, Convolution Neural Network based on Candidate Region) is proposed in this paper. The RGB information and the depth information of the image are given to two input elements of the convolution network with the same structure and weight sharing, and an optimal fusion weight algorithm is used to determine the weight of the fusion target in accordance with the recognition accuracy of the recognition targets under the single modal information, so as to ensure the most efficient fusion result. After several convolution operations, the independent features are extracted and the two networks are fused according to the optimal weights in the convolution layer. With the conducting of convolution and extract the fused features, and finally get the output through the full link layer. Compared with the previous two-dimensional convolution network algorithm, this algorithm improves the detection rate and success rate while ensuring the detection time. The experimental result shows that this method has strong robustness for complex illumination and partial occlusion, and has excellent detection results under non-restrictive conditions.
机译:目前,深度学习算法在二维彩色图像检测中的应用正在不断创新和突破。随着深度相机的普及,需要对具有深度信息的彩色图像检测方法进行升级。针对这一问题,提出了一种基于3D DSF R-CNN的多目标检测算法(双流快速R-CNN,基于候选区域的卷积神经网络)。将图像的RGB信息和深度信息提供给具有相同结构和权重共享的卷积网络的两个输入元素,并根据识别精度使用最佳融合权重算法确定融合目标的权重在单一模态信息下识别目标,从而确保最有效的融合结果。经过几次卷积运算后,提取独立特征,并根据卷积层中的最佳权重将两个网络融合。通过进行卷积并提取融合特征,最后通过完整的链接层获得输出。与以前的二维卷积网络算法相比,该算法在保证检测时间的同时,提高了检测率和成功率。实验结果表明,该方法对复杂照明和部分遮挡具有很强的鲁棒性,在非限制性条件下具有优异的检测效果。

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