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Enhanced pedestrian detection using optimized deep convolution neural network for smart building surveillance

机译:利用优化的深度卷积神经网络来增强行人检测,以进行智能建筑监测

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摘要

Pedestrian detection and tracking is a critical task in the area of smart building surveillance. Due to advancements in sensors, the architects concentrate in construction of smart buildings. Pedestrian detection in smart building is greatly challenged by the image noises by various external environmental parameters. Traditional filter-based techniques for image classification like histogram of oriented gradients filters and machine learning algorithms suffer to perform well for huge volume of pedestrian input images. The advancements in deep learning algorithms perform exponentially good in handling the huge volume of image data. The current study proposes a pedestrian detection model based on deep convolution neural network (CNN) for classification of pedestrians from the input images. Proposed optimized version of VGG-16 architecture is evaluated for pedestrian detection on the INRIA benchmarking dataset consisting of 227 x 227 pixel images. The proposed model achieves an accuracy of 98.5%. It was found that proposed model performs better than the other pretrained CNN architectures and other machine learning models. Pedestrians are reasonably detected and the performance of the proposed algorithm is validated.
机译:行人检测和跟踪是智能建筑监视领域的关键任务。由于传感器的进步,建筑师专注于智能建筑的建设。通过各种外部环境参数,智能建筑中的行人检测极大地受到图像噪声的挑战。基于传统的基于滤波器的图像分类技术,如面向梯度过滤器的直方图和机器学习算法遭受巨大的行人输入图像。深度学习算法的进步在处理大量的图像数据方面表现良好。目前的研究提出了一种基于深卷积神经网络(CNN)的行人检测模型,用于从输入图像分类行人。建议的VGG-16架构的优化版本评估了由227 x 227像素图像组成的INRIA基准测试数据集的行人检测。所提出的模型的准确性为98.5%。发现,所提出的模型比其他预用的CNN架构和其他机器学习模型更好。行人是合理的检测到的,并且验证了所提出的算法的性能。

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