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Fraud Detection with Multi-Modal Attention and Correspondence Learning

机译:欺诈检测与多模态注意力和函授学习

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Deep learning based recognition systems have shown high performances in various tasks. Most of them are single-modality based, using camera inputs only, thus are vulnerable to look-alike fraud inputs. Fraud inputs may frequently be abused when rewards are given to the users, such as in reverse vending machines. Joint use of multi-modal inputs can be a solution to fraud inputs since modalities contain different information about the target task. In this work, we propose a deep neural network that utilizes multi-modal inputs with an attention mechanism and a correspondence learning scheme. With an attention mechanism, the network can learn better feature representation for multiple modalities; with the correspondence learning scheme, the network learns intermodal relationships and thus can detect fraud inputs where modalities do not correspond to each other. We investigate the proposed approach in a reverse vending machine system, where the task is to perform classification among 3 given classes (can, PET bottles, glass bottles), and reject any suspicious input. Three different modalities (image, ultrasound, and weight) are used. As a result, we show that our proposed model can effectively learn to detect fraud inputs while maintaining a high accuracy for the given classification task.
机译:基于深度学习的识别系统在各种任务中表现出很高的表现。它们中的大多数是基于单色的,仅使用相机输入,因此很容易受到看起来相似的欺诈投入。在给予用户的奖励时可能经常滥用欺诈投入,例如反向自动售货机。联合使用多模态输入可以是欺诈投入的解决方案,因为模式包含有关目标任务的不同信息。在这项工作中,我们提出了一种深度神经网络,其利用具有注意机制和对应学习方案的多模态输入。通过注意机制,网络可以为多种方式学习更好的特征表示;利用对应学习方案,网络学习多语言关系,因此可以检测欺诈输入,其中模态不对应于彼此。我们在反向自动售货机系统中调查了所提出的方法,其中任务是在3个给定的类别(CAN,PET瓶,玻璃瓶)之间进行分类,并拒绝任何可疑输入。使用三种不同的模态(图像,超声波和重量)。结果,我们表明我们所提出的模型可以有效地学会检测欺诈输入,同时保持给定的分类任务的高精度。

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