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Object Detection Using Deep Convolutional Neural Networks

机译:使用深度卷积神经网络的目标检测

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Object detection is a fundamental problem in image analysis and understanding. Lots of progress have been acquired on object detection due to the introduction of deep convolutional neural networks in recent years. Most of those algorithms can be categorized into two types, the two-stage method composed of region proposals generation and object classification along with the position regression of bounding box, and the one-stage regression method directly predicting classes and anchor offsets of objects. In this paper, the typically explored methods of these two types will be discussed to illustrate their development procedures. Moreover, Faster R-CNN and SSD are chosen as representatives for comparison. Experimental results demonstrate that the detection accuracies of SSD and Faster R-CNN are close, and each has its own merits in different images.
机译:目标检测是图像分析和理解中的一个基本问题。近年来,由于深度卷积神经网络的引入,在目标检测方面取得了许多进展。这些算法中的大多数可分为两类:由区域提议生成和对象分类以及边界框的位置回归组成的两阶段方法,以及直接预测对象的类别和锚点偏移的一阶段回归方法。在本文中,将讨论这两种类型的典型探索方法,以说明它们的开发过程。此外,选择Faster R-CNN和SSD作为比较的代表。实验结果表明,SSD和Faster R-CNN的检测精度相近,并且在不同图像上各有千秋。

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