Artificial Neural Network for Human Object Interaction System Over Aerial Images

Mahwish Pervaiz, Ahmad Jalal
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引用次数: 7

Abstract

Recognition of human and object interaction is an important milestone in image understanding and event analysis. Recognizing interactions between humans and objects is the most promising way in visual classification to analyze activities or events happening at any place. Many researchers have invested their efforts in the field of activity recognition between humans and objects. However, some challenges are still open due to incorrect interaction inferences, occlusion between a person and target objects, unrelated target objects, or unclear activities. The major goal of this research project is to provide a useful system for categorising event classification and human-object interaction. Preprocessing, feature extraction, feature optimization, and classification using an artificial neural network are the four main processes of the proposed method. The Games Action dataset, which contains aerial photos, has been used to test the proposed technique. Results demonstrate the effectiveness of the suggested system.
基于航拍图像的人-物交互系统的人工神经网络
人与物交互的识别是图像理解和事件分析的重要里程碑。识别人与物体之间的相互作用是视觉分类中最有希望分析在任何地方发生的活动或事件的方法。许多研究人员在人与物体之间的活动识别领域投入了大量的精力。然而,由于不正确的交互推断,人与目标物体之间的遮挡,不相关的目标物体或不清楚的活动,仍然存在一些挑战。本研究项目的主要目标是为事件分类和人-物交互提供一个有用的分类系统。预处理、特征提取、特征优化和人工神经网络分类是该方法的四个主要过程。包含航拍照片的Games Action数据集已被用于测试所提出的技术。结果表明了该系统的有效性。
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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