首页> 外文会议>Conference on Sensor Fusion: Architectures, Algorithms, and Applications Ⅴ Apr 18-20, 2001, Orlando, USA >Metric Sensitivity of the Multi-Sensor Information Fusion Process under Instance-Based Learning
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Metric Sensitivity of the Multi-Sensor Information Fusion Process under Instance-Based Learning

机译:基于实例学习的多传感器信息融合过程的度量敏感性

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The study investigates the sensitivity of the instance-based-learning (IBL) driven multi-source information fusion process to the underlying distance metric. An audio-visual system for recognition of spoken French vowels is used as an example for this investigation. Three different distance measures, namely, Euclidean, city block and chess board metrics, are employed for this initial foray into metric sensitivity analysis. In this example, the test phase encompasses a broader range of noise environments of the audio signal as compared to the training phase. The system is thus exercised in both trained and untrained noise regimes. Under the untrained regime, interpolation as well as extrapolation or off-nominal scenarios are considered. In the former, the signal to noise ratio in the test phase is within the range used in training phase but does not specifically include it. In the latter, the signal to noise ratio in the test phase is outside the range used in the training phase. It is observed that while both of the single-sensor based decision systems individually are not very sensitive to the choice of the metric, the fused decision system is indeed significantly more sensitive to this choice. The city block metric offers better performance as compared to the other two in the case of the fused audio-visual system across most of the spectrum of noise environments, except for the extreme off-nominal conditions wherein the Euclidean offers slightly better performance. The chess board metric offers the lowest performance across the entire test range. The lack of training in the interpolation scenario has a noticeably strong effect on audio performance under the chess board metric.
机译:这项研究调查了基于实例的学习(IBL)驱动的多源信息融合过程对基础距离度量的敏感性。识别口语法语元音的视听系统被用作此调查的示例。这是对度量敏感度分析的最初尝试,采用了三种不同的距离度量,即欧几里得,城市街区和棋盘度量。在该示例中,与训练阶段相比,测试阶段涵盖了音频信号噪声环境的更大范围。因此,该系统在训练有声和无训练有声的情况下都可以使用。在未经训练的情况下,考虑内插以及外推或偏离标称的情况。在前者中,测试阶段的信噪比在训练阶段所用的范围内,但没有具体包括在内。在后者中,测试阶段的信噪比超出了训练阶段使用的范围。可以观察到,虽然两个基于单传感器的决策系统分别对度量的选择都不十分敏感,但融合决策系统的确对这种选择更为敏感。在融合的视听系统中,在大多数噪声环境中,与其他两个城市相比,城市街区度量提供了更好的性能,除了极端偏离标称的条件(其中欧几里得的性能稍好)。棋盘度量标准在整个测试范围内提供最低的性能。插值场景中缺乏训练会对棋盘度量标准下的音频性能产生明显的影响。

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