首页> 外文会议>IEEE Symposium on Computational Intelligence for Security and Defense Applications (CISDA 2009) >Tracking a moving hypothesis for visual data with explicit switch detection
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Tracking a moving hypothesis for visual data with explicit switch detection

机译:通过显式开关检测跟踪视觉数据的移动假设

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The use of support vector (SV) methods has been successful in many areas involving pattern recognition. Video surveillance requires pattern recognition algorithms that are efficient in their operation, and requires the use of online processing for the detection and identification of events, objects, and behaviours. To successfully use SV methods in video surveillance, on-line training methods must be employed; NORMA [1] is one such training method. A video surveillance system represents a dynamic system with non-stationary characteristics. It is the purpose of our work to enhance NORMA to better adapt to sudden changes (switches) in the surveillance environment. We show that the decision hypothesis that NORMA generates is more accurate when a switch in the data is explicitly detected and managed. Our preliminary testing involves simulated data, real world benchmark data, and real video data captured from a digital camera.
机译:支持向量(SV)方法的使用已在涉及模式识别的许多领域获得成功。视频监控需要高效的模式识别算法,并且需要使用在线处理来检测和识别事件,对象和行为。为了在视频监控中成功使用SV方法,必须采用在线培训方法。 NORMA [1]是一种这样的训练方法。视频监视系统代表具有非平稳特性的动态系统。我们的工作目的是增强NORMA,使其更好地适应监视环境中的突然变化(切换)。我们表明,当明确检测和管理数据切换时,NORMA生成的决策假设更为准确。我们的初步测试涉及模拟数据,真实世界的基准数据以及从数码相机捕获的真实视频数据。

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