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Dependency of human target detection performance on clutter and quality of supporting image analysis algorithms in a video surveillance task

机译:人体目标检测性能对视频监控任务中的支持图像分析算法的杂波和质量

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Background: In target detection, the success rates depend strongly on human observer performances. Two prior studies tested the contributions of target detection algorithms and prior training sessions. The aim of this Swiss-German cooperation study was to evaluate the dependency of human observer performance on the quality of supporting image analysis algorithms. Methods: The participants were presented 15 different video sequences. Their task was to detect all targets in the shortest possible time. Each video sequence showed a heavily cluttered simulated public area from a different viewing angle. In each video sequence, the number of avatars in the area was altered to 100, 150 and 200 subjects. The number of targets appearing was kept at 10%. The number of marked targets varied from 0, 5, 10, 20 up to 40 marked subjects while keeping the positive predictive value of the detection algorithm at 20%. During the task, workload level was assessed by applying an acoustic secondary task. Detection rates and detection times for the targets were analyzed using inferential statistics. Results: The study found Target Detection Time to increase and Target Detection Rates to decrease with increasing numbers of avatars. The same is true for the Secondary Task Reaction Time while there was no effect on Secondary Task Hit Rate. Furthermore, we found a trend for a u-shaped correlation between the numbers of markings and RT_(ST) indicating increased workload. Conclusion: The trial results may indicate useful criteria for the design of training and support of observers in observational tasks.
机译:背景:在目标检测中,成功率强烈依赖于人类观察者性能。两项先前的研究测试了目标检测算法和事先培训课程的贡献。该瑞士德国合作研究的目的是评估人类观察者性能对支持图像分析算法的质量的依赖性。方法:参与者呈现了15种不同的视频序列。他们的任务是在最短的时间内检测所有目标。每个视频序列从不同的观察角度展示了一个严重杂乱的模拟公共区域。在每个视频序列中,该区域中的化身的数量被改变为100,150和200个受试者。出现的目标数量保持在10%。标记目标的数量从0,5,10,20多达40个标记的受试者变化,同时将检测算法的阳性预测值保持在20%。在任务期间,通过应用声学二级任务来评估工作负载级别。使用推动统计分析目标的检测速率和检测时间。结果:该研究发现了随着越来越多的化身数量来增加和目标检测速率的目标检测时间。对于二级任务反应时间也是如此,而对二次任务命中率没有影响。此外,我们在指示增加工作量的标记和RT_(ST)之间的U形相关性的情况下发现了一种趋势。结论:试验结果可能表示在观察任务中设计培训和支持的有用标准。

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