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A Multibranch Object Detection Method for Traffic Scenes

机译:交通场景的多刺对象检测方法

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The performance of convolutional neural network- (CNN-) based object detection has achieved incredible success. Howbeit, existing CNN-based algorithms suffer from a problem that small-scale objects are difficult to detect because it may have lost its response when the feature map has reached a certain depth, and it is common that the scale of objects (such as cars, buses, and pedestrians) contained in traffic images and videos varies greatly. In this paper, we present a 32-layer multibranch convolutional neural network named MBNet for fast detecting objects in traffic scenes. Our model utilizes three detection branches, in which feature maps with a size of 16?×?16, 32?×?32, and 64?×?64 are used, respectively, to optimize the detection for large-, medium-, and small-scale objects. By means of a multitask loss function, our model can be trained end-to-end. The experimental results show that our model achieves state-of-the-art performance in terms of precision and recall rate, and the detection speed (up to 33?fps) is fast, which can meet the real-time requirements of industry.
机译:基于卷积神经网络的性能(CNN-)的物体检测已经取得了令人难以置信的成功。 Noobeit,现有的基于CNN的算法遭受了一个问题,即小型对象难以检测,因为当特征图已经达到了一定深度时它可能已经丢失了响应,并且常见的是物体的比例(例如汽车交通图像和视频中包含的公共汽车和行人差异很大。在本文中,我们介绍了一个名为MBNet的32层多刺卷积神经网络,用于快速检测交通场景中的对象。我们的模型利用了三个检测分支,其中分别使用尺寸为16Ω·×16,32?×32和64×××64的特征映射,以优化对大,中等的检测小规模对象。通过多任务丢失功能,我们的模型可以培训结束到底。实验结果表明,我们的模型在精度和召回率方面实现了最先进的性能,并且检测速度(最多33架FPS)快速,这可以满足行业的实时要求。

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