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Fine-Grained Walking Activity Recognition via Driving Recorder Dataset

机译:通过行车记录仪数据集进行细粒度的步行活动识别

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The paper presents a fine-grained walking activity recognition toward an inferring pedestrian intention which is an important topic to predict and avoid a pedestrian's dangerous activity. The fine-grained activity recognition is to distinguish different activities between subtle changes such as walking with different directions. We believe a change of pedestrian's activity is significant to grab a pedestrian intention. However, the task is challenging since a couple of reasons, namely (i) in-vehicle mounted camera is always moving (ii) a pedestrian area is too small to capture a motion and shape features (iii) change of pedestrian activity (e.g. walking straight into turning) has only small feature difference. To tackle these problems, we apply vision-based approach in order to classify pedestrian activities. The dense trajectories (DT) method is employed for high-level recognition to capture a detailed difference. Moreover, we additionally extract detection-based region-of-interest (ROI) for higher performance in fine-grained activity recognition. Here, we evaluated our proposed approach on "self-collected dataset" and "near-miss driving recorder (DR) dataset" by dividing several activities-crossing, walking straight, turning, standing and riding a bicycle. Our proposal achieved 93.7% on the self-collected NTSEL traffic dataset and 77.9% on the near-miss DR dataset.
机译:本文提出了一种细微的步行活动识别方法,可以推断出行人的意图,这是预测和避免行人危险活动的重要课题。细粒度的活动识别是为了区分细微变化之间的不同活动,例如不同方向的步行。我们认为,改变行人的活动对于抓住行人的意图很重要。但是,该任务具有挑战性,原因有两个,即(i)车载摄像机始终在移动(ii)行人区域太小而无法捕获运动和形状特征(iii)行人活动的变化(例如步行)直线转弯)仅具有很小的特征差异。为了解决这些问题,我们采用基于视觉的方法对行人活动进行分类。密集轨迹(DT)方法用于高级识别以捕获详细差异。此外,我们还提取了基于检测的关注区域(ROI),以实现细粒度活动识别中的更高性能。在这里,我们通过划分多个活动(交叉,直走,转弯,站立和骑自行车)来评估我们在“自收集数据集”和“近距离驾驶记录仪(DR)数据集”上提出的方法。我们的建议在自行收集的NTSEL流量数据集上达到了93.7%,在未命中DR数据集上达到了77.9%。

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