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Object detection in MOUT: evaluation of a hybrid approach for confirmation and rejection of object detection hypotheses

机译:MOUT中的对象检测:评估用于确认和拒绝对象检测假设的混合方法

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Military Operations in Urban Terrain (MOUT) require the capability to perceive and to analyze the situation around a patrol in order to recognize potential threats. A permanent monitoring of the surrounding area is essential in order to appropriately react to the given situation, where one relevant task is the detection of objects that can pose a threat. Especially the robust detection of persons is important, as in MOUT scenarios threats usually arise from persons. This task can be supported by image processing systems. However, depending on the scenario, person detection in MOUT can be challenging, e.g. persons are often occluded in complex outdoor scenes and the person detection also suffers from low image resolution. Furthermore, there are several requirements on person detection systems for MOUT such as the detection of non-moving persons, as they can be a part of an ambush. Existing detectors therefore have to operate on single images with low thresholds for detection in order to not miss any person. This, in turn, leads to a comparatively high number of false positive detections which renders an automatic vision-based threat detection system ineffective. In this paper, a hybrid detection approach is presented. A combination of a discriminative and a generative model is examined. The objective is to increase the accuracy of existing detectors by integrating a separate hypotheses confirmation and rejection step which is built by a discriminative and generative model. This enables the overall detection system to make use of both the discriminative power and the capability to detect partly hidden objects with the models. The approach is evaluated on benchmark data sets generated from real-world image sequences captured during MOUT exercises. The extension shows a significant improvement of the false positive detection rate.
机译:城市地形(MOUT)的军事行动需要具备感知和分析巡逻周围情况的能力,以便识别潜在威胁。为了对给定情况做出适当反应,对周围区域进行永久监视至关重要,在该情况下,一项相关任务是检测可能构成威胁的物体。特别是对人员的强健检测非常重要,因为在MOUT场景中威胁通常是由人员引起的。图像处理系统可以支持此任务。但是,根据情况,MOUT中的人员检测可能非常困难,例如人们常常被困在复杂的室外场景中,并且人的检测也遭受低图像分辨率的困扰。此外,对于用于MOUT的人员检测系统有一些要求,例如检测非移动人员,因为它们可能是伏击的一部分。因此,现有的检测器必须在具有低阈值的单个图像上进行操作以进行检测,以便不会错过任何人。反过来,这导致相对较高数量的误报检测,这使得基于视觉的自动威胁检测系统无效。在本文中,提出了一种混合检测方法。检查判别模型和生成模型的组合。目的是通过集成由判别和生成模型建立的单独的假设确认和拒绝步骤来提高现有检测器的准确性。这使整个检测系统能够利用判别能力和利用模型检测部分隐藏物体的能力。该方法是根据从MOUT练习中捕获的真实图像序列生成的基准数据集进行评估的。扩展名显示了假阳性检测率的显着提高。

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