基于WiSARD失重神经网络的海面目标跟踪

R. Moreira, N. Ebecken, A. S. Alves, F. França
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引用次数: 7

摘要

提出了一种利用WiSARD无重力神经网络对视频中海面目标进行跟踪的方法。在许多应用中,视频对象的跟踪是一项重要且具有挑战性的任务。由于天气条件、目标轨迹和外观、遮挡、照明条件和噪声,可能会出现困难。跟踪是一种高级应用程序,需要逐帧实时地定位对象。在每一帧中,基于分割检测的跟踪器执行三个主要步骤:检测、跟踪和对象特征分析。这些步骤取决于分割质量,WiSARD神经网络执行的跟踪取决于图像二值化质量。本文提出了一种基于YcbCr颜色模型的快速混合二值化(阈值分割和边缘检测)方法,以及在二值化出现错误时配置WiSARD神经网络的方法。
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Tracking Targets in Sea Surface with the WiSARD Weightless Neural Network
This paper presents a method of tracking sea surface targets in video using the WiSARD weightless neural network. The tracking of objects in video is an important and challenging task in many applications. Difficulties can arise due to weather conditions, target trajectory and appearance, occlusions, lighting conditions and noise. Tracking is a high-level application and requires the object location frame by frame in real time. At each frame, a tracker based on detection by segmentation performs three main steps: detection, tracking and analysis of the object characteristics. These steps depend on the segmentation quality and the tracking performed by the WiSARD neural network depends on the image binarization quality. This paper proposes a fast hybrid binarization (thresholding and edge detection) in YcbCr color model and ways to configure a WiSARD neural network to improve efficiency when binarization errors occur.
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