Robust Object Detection and Localization Using Semantic Segmentation Network

IF 1.5 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
A Francis Alexander Raghu;J P Ananth
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引用次数: 0

Abstract

The advancements in the area of object localization are in great progress for analyzing the spatial relations of different objects from the set of images. Several object localization techniques rely on classification, which decides, if the object exist or not, but does not provide the object information using pixel-wise segmentation. This work introduces an object detection and localization technique using semantic segmentation network (SSN) and deep convolutional neural network (Deep CNN). Here, the proposed technique consists of the following steps: Initially, the image is denoised using the filtering to eliminate the noise present in the image. Then, pre-processed image undergoes sparking process for making the image suitable for the segmentation using SSN for object segmentation. The obtained segments are subjected as the input to the proposed Stochastic-Cat Crow optimization (Stochastic-CCO)-based Deep CNN for the object classification. Here, the proposed Stochastic-CCO, obtained by integrating stochastic gradient descent and the CCO, is used for training the Deep CNN. The CCO is designed by the integration of cat swarm optimization (CSO) and crow search algorithm and takes advantages of both optimization algorithms. The experimentation proves that the proposed Stochastic-CCO-based Deep CNN-based technique acquired maximal accuracy of 98.7.
基于语义分割网络的鲁棒目标检测与定位
从图像集合中分析不同物体之间的空间关系,是目标定位领域的一大进步。几种目标定位技术依赖于分类,它决定目标是否存在,但不使用逐像素分割提供目标信息。本文介绍了一种使用语义分割网络(SSN)和深度卷积神经网络(deep CNN)的目标检测和定位技术。在这里,提出的技术包括以下步骤:首先,使用滤波对图像进行降噪,以消除图像中存在的噪声。然后,预处理后的图像进行火花处理,使图像适合使用SSN进行对象分割。将获得的片段作为输入输入到基于随机猫乌鸦优化(random - cat Crow optimization,简称random - cco)的深度CNN中进行对象分类。在这里,将随机梯度下降和CCO集成得到的random -CCO用于训练Deep CNN。该算法将猫群优化算法(CSO)和乌鸦搜索算法相结合,充分利用了这两种优化算法的优点。实验证明,基于random - cco的深度cnn技术获得了98.7的最大准确率。
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来源期刊
Computer Journal
Computer Journal 工程技术-计算机:软件工程
CiteScore
3.60
自引率
7.10%
发文量
164
审稿时长
4.8 months
期刊介绍: The Computer Journal is one of the longest-established journals serving all branches of the academic computer science community. It is currently published in four sections.
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