A Noval Approach for Object Recognition Using Decision Tree Clustering by Incorporating Multi-Level BPNN Classifiers and Hybrid Texture Features

IF 0.5 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Information Retrieval Research Pub Date : 2024-02-19 DOI:10.4018/ijirr.338394
Upendra Kumar
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Abstract

This work proposes a novel approach to object recognition, particularly for human faces, based on the principle of human cognition. The suggested approach can handle a dataset or problem with a large number of classes for classification more effectively. The model for the facial recognition-based object detection system was constructed using a combination of decision tree clustering based multi-level Backpropagation neural network classifier-TFMLBPNN-DTC and hybrid texture feature (ILMFD+GLCM) and applied on NS and ORL databases. This model produced the classification accuracy (±standard deviation) of 95.37 ±0.951877% and 90.83 ± 1.374369% for single input and 96.58 ±0.5604582% and 91.50 ± 2.850439% for group-based decision for NS and ORL database respectively. The better classification results encourage its application to other object recognition and classification issues. This work's basic idea also makes it easier to improve classification management for a wide range of classes.
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结合多级 BPNN 分类器和混合纹理特征,使用决策树聚类的 Noval 物体识别方法
本作品基于人类认知原理,提出了一种新颖的物体识别方法,特别是人脸识别方法。所建议的方法可以更有效地处理具有大量分类的数据集或问题。基于决策树聚类的多级反向传播神经网络分类器-TFMLBPNN-DTC和混合纹理特征(ILMFD+GLCM)相结合,构建了基于人脸识别的物体检测系统模型,并应用于NS和ORL数据库。在 NS 和 ORL 数据库中,该模型的单输入分类准确率(±标准偏差)分别为 95.37 ±0.951877% 和 90.83 ± 1.374369%,基于组的分类准确率(±标准偏差)分别为 96.58 ±0.5604582% 和 91.50 ± 2.850439%。较好的分类结果促进了它在其他物体识别和分类问题上的应用。这项工作的基本思想也使其更容易改进对各种类别的分类管理。
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International Journal of Information Retrieval Research
International Journal of Information Retrieval Research COMPUTER SCIENCE, INFORMATION SYSTEMS-
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