Deep Learning Based Motion Target Detection Algorithm

Xizhou Wang
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Abstract

With the dramatic growth of video data, the storage and computational resources required to process this huge amount of data have increased significantly. In order to cope with this challenge, it is necessary to extract the key information in the video in a more intelligent and efficient way, while filtering out a large amount of redundant content. In this paper, the traditional CNN model and Transformer model are constructed respectively using video frames of car motion process from video viewpoint as a dataset. The model performance is improved by advanced data preprocessing operations. The bilateral filtering technique is introduced in this study, aiming to improve the image quality and enhance the image processing effect through denoising operations, making it more applicable to the subsequent processing steps. Finally, the Transformer model is verified by the model and the recognition accuracy of the Transformer model is up to about 90%.
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基于深度学习的运动目标检测算法
随着视频数据的急剧增长,处理这些海量数据所需的存储和计算资源也大幅增加。为了应对这一挑战,有必要以更智能、更高效的方式提取视频中的关键信息,同时过滤掉大量冗余内容。本文以视频视角下汽车运动过程的视频帧为数据集,分别构建了传统 CNN 模型和 Transformer 模型。通过先进的数据预处理操作提高了模型性能。本研究引入了双边滤波技术,旨在通过去噪操作提高图像质量,增强图像处理效果,使其更适用于后续处理步骤。最后,通过模型对 Transformer 模型进行了验证,Transformer 模型的识别准确率高达 90% 左右。
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