The CNN and DPM based approach for multiple object detection in images

Amruta D. Dange, B. Momin
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引用次数: 4

Abstract

With the development of intelligent device and social media, the bulk of data on Internet has grown with high speed. There are so many important aspect in image processing, object detection is one of the international demanded research field. Multiple object detection is an important concept in object detection. In object detection extracting the features and handling the occlusion are two most important components. A Region-based Convolution Neural Network (R-CNN) has achieved great success in extracting the region based features which may used for extracting multiple regions from the images and Deformable Part Based Model (DPM) improve the ability for handling the occlusion. Occlusion handling is nothing but when multiple objects are near to each other that time some objects are not detected so this drawback will be handled by DPM. Existing method not performing well in the aspect of detecting multiple objects. In this paper R-CNN and DPM are to be integrated to detect multiple objects. By combining these two models we are able to notice every single object with high accuracy.
基于CNN和DPM的图像多目标检测方法
随着智能设备和社交媒体的发展,互联网上的数据量高速增长。在图像处理中有许多重要的方面,目标检测是国际上迫切需要研究的领域之一。多目标检测是目标检测中的一个重要概念。在目标检测中,特征提取和遮挡处理是两个最重要的组成部分。基于区域的卷积神经网络(R-CNN)在提取基于区域的特征方面取得了巨大的成功,该特征可用于从图像中提取多个区域,基于变形部分模型(DPM)提高了处理遮挡的能力。遮挡处理只不过是当多个物体彼此靠近时,一些物体没有被检测到,所以这个缺点将由DPM处理。现有方法在多目标检测方面表现不佳。本文将R-CNN和DPM相结合,实现多目标检测。通过结合这两种模型,我们能够高精度地注意到每一个物体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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