基于场景级区域建议自关注的目标检测模型

Yu Quan, Zhixin Li, Canlong Zhang, Huifang Ma
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引用次数: 0

摘要

为了提高两阶段目标检测的性能,考虑到场景信息和语义信息对视觉识别的重要性,本文对目标检测算法的神经网络进行了研究和分析。本文的主要研究工作包括:提出了一种基于深度可分卷积的场景级区域自注意目标检测模型。为了获得更强的目标场景语义信息和上下文信息,在区域建议识别过程的基础上重构了场景级区域建议自关注模块。将输出的特征金字塔网络的特征映射分为三个并行分支:语义分割模块、候选区域网络模块和区域建议自关注模块。同时,为了提高模型的整体性能,在骨干网上构建了深度可分卷积网络模块,该模块包括六个阶段。在网络的第五到第六阶段,分别对可分离的卷积网络模块进行集成。最后,提出了一种基于边界回归网络增强的目标检测方法,实现了目标的精确定位。为了验证各模型的有效性,对各模型的实验结果进行了分析。
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Object Detection Model Based on Scene-Level Region Proposal Self-Attention
In order to improve the performance of two-stage object detection and consider the importance of scene and semantic information for visual recognition, the neural network of object detection algorithm is studied and analyzed in this paper. The main research work of this paper includes: A scene level region proposal self-attention object detection model based on depth separable convolution is proposed. In order to obtain stronger semantic information and context information of the target scene, the scene-level region proposal self-attention module is reconstructed based on the process of region proposal recognition. The feature map of the output feature pyramid network is sent into three parallel branches: semantic segmentation module, candidate area network module and region proposal self-attention module. At the same time, for the overall performance of the model, a deep separable convolutional network module is constructed on the backbone network, which includes six stages. In the fifth to sixth stage of the network, the separable convolutional network module is integrated respectively. Finally, a object detection method based on border regression network enhancement is proposed to achieve accurate target location. In order to verify the effectiveness of each model, the experimental results of each model are analyzed.
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