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A Convolutional Neural Network Model for Object Detection Based on Receptive Field

机译:基于接收场的对象检测卷积神经网络模型

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The mainstream methods for object detection can be divided into two types: one-stage (based on Integrated Convolutional Network) and two-stage (based on Candidate Box Convolutional Network). The one-stage method is fast but not accurate. While the two-stage method is accurate but slow. Thus, this paper proposes a novel convolutional neural network model that can satisfy both efficiency and accuracy needs for real-time object detection. Based on Single Shot Detector (SSD) and Feature Pyramid Networks (FPN), the proposed model addresses the issue of small object detection. The introduction of receptive field block (RFB) and RefineDet network improves the accuracy of the model. The experiment results show that the mAP value of the model exceeds 80%, and the FPS is above 30, when the size of the input image is 320 * 320.
机译:对象检测的主流方法可以分为两种类型:单级(基于集成卷积网络)和两级(基于候选盒卷积网络)。 一阶段方法快速但不准确。 虽然两级方法准确但慢。 因此,本文提出了一种新型卷积神经网络模型,可以满足实时对象检测的效率和准确性需求。 基于单次检测器(SSD)和特征金字塔网络(FPN),所提出的模型解决了小对象检测的问题。 接收领域块(RFB)和Refintet网络的引入提高了模型的准确性。 实验结果表明,当输入图像的尺寸为320 * 320时,模型的地图值超过80%,并且FPS高于30。

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