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Convolutional Neural Networks-Based Object Detection Algorithm by Jointing Semantic Segmentation for Images

机译:基于卷积神经网络的对象检测算法通过连接图像的语义分割

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摘要

In recent years, increasing image data comes from various sensors, and object detection plays a vital role in image understanding. For object detection in complex scenes, more detailed information in the image should be obtained to improve the accuracy of detection task. In this paper, we propose an object detection algorithm by jointing semantic segmentation (SSOD) for images. First, we construct a feature extraction network that integrates the hourglass structure network with the attention mechanism layer to extract and fuse multi-scale features to generate high-level features with rich semantic information. Second, the semantic segmentation task is used as an auxiliary task to allow the algorithm to perform multi-task learning. Finally, multi-scale features are used to predict the location and category of the object. The experimental results show that our algorithm substantially enhances object detection performance and consistently outperforms other three comparison algorithms, and the detection speed can reach real-time, which can be used for real-time detection.
机译:近年来,增加图像数据来自各种传感器,对象检测在图像理解中起着重要作用。对于复杂场景中的对象检测,应获得更详细的图像以提高检测任务的准确性。在本文中,我们通过为图像接合语义分割(SSOD)提出了一种物体检测算法。首先,我们构建一个特征提取网络,将沙漏结构网络与注意机制层集成,以提取和保险丝多尺度特征,以产生具有丰富语义信息的高级功能。其次,语义分段任务用作辅助任务以允许算法执行多任务学习。最后,使用多尺度特征来预测对象的位置和类别。实验结果表明,我们的算法基本上增强了物体检测性能,始终如一地优于其他三个比较算法,并且检测速度可以达到实时,可用于实时检测。

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