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Detection of valuable left-behind items in vehicle cabins

机译:检测车厢内有价值的残留物品

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We propose a method for detecting valuable left-behind items in vehicle cabins which uses a single overhead camera. An additional sub-network is incorporated into the Faster R-CNN framework in order to allow it to estimate item value based on visual properties, as well as to perform detection. A loss function which contains a user-specified minimum-value threshold is introduced, which enables warnings to be given if a detected item is above this threshold. As a significant amount of real data is time consuming to collect on the scale necessary for (deep) learning-based methods, an ImageNet model is first retrained on synthetic data to adapt it to our environment, before training on some real data. The effectiveness of this detection and validation approach is demonstrated by integrating additional valuation subnetworks into two convolutional neural network detection architectures.
机译:我们提出了一种使用单个高架摄像机检测车厢内有价值的残留物品的方法。 Faster R-CNN框架中集成了一个附加子网,以便允许它根据视觉属性估算商品价值,并执行检测。引入了一个包含用户指定的最小值阈值的损失函数,如果检测到的项目高于该阈值,则可以发出警告。由于要收集大量(基于深度学习方法的)真实数据非常耗时,因此在对某些真实数据进行训练之前,首先在合成数据上对ImageNet模型进行重新训练以使其适应我们的环境。通过将其他评估子网集成到两个卷积神经网络检测体系结构中,证明了这种检测和验证方法的有效性。

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