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Autonomous Detector Using Saliency Map Model and Modified Mean-Shift Tracking for a Blind Spot Monitor in a Car

机译:自主检测器使用显着的地图模型和汽车盲点监视器的修改平均转换跟踪

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We propose an autonomous blind spot monitoring method using a morphology-based saliency map (SM) model and the method of combining Scale Invariant Feature Transform (SIFT) with mean-shift tracking algorithm. The proposed method decides a region of interest (ROI) which includes the blind spot from the successive image frames obtained by side-view cameras. Topology information of the salient areas obtained from the SM model is used to detect a candidate of dangerous situations in the ROI, and the SIFT algorithm is considered for verifying whether the localized candidate area contains an automobile. We developed a modified mean-shift algorithm to track the detected automobile in a blind spot area. The modified mean-shift algorithm uses the orientation probability histogram for tracking the automobile around the localized area. Experimental results show that the proposed algorithm successfully provides an alarm signal to the driver in a dangerous situations caused by approaching an automobile at side-view.
机译:我们提出了一种使用基于形态的显着性图(SM)模型的自主盲点监测方法以及与平均移位跟踪算法组合规模不变特征变换(SIFT)的方法。所提出的方法确定感兴趣区域(ROI),其包括来自通过侧视摄像机获得的连续图像帧的盲点。从SM模型获得的突出区域的拓扑信息用于检测ROI中的危险情况的候选,并且考虑了SIFT算法用于验证本地化候选区域是否包含汽车。我们开发了一种修改的平均换档算法,可以在盲点区域跟踪检测到的汽车。修改的平均换档算法使用方向概率直方图跟踪局部区域周围的汽车。实验结果表明,该算法在侧视图中接近汽车引起的危险情况下,该算法成功向驾驶员提供了警报信号。

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