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Online Adaptation for Joint Scene and Object Classification

机译:联合场景和对象分类的在线适应

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Recent efforts in computer vision consider joint scene and object classification by exploiting mutual relationships (often termed as context) between them to achieve higher accuracy. On the other hand, there is also a lot of interest in online adaptation of recognition models as new data becomes available. In this paper, we address the problem of how models for joint scene and object classification can be learned online. A major motivation for this approach is to exploit the hierarchical relationships between scenes and objects, represented as a graphical model, in an active learning framework. To select the samples on the graph, which need to be labeled by a human, we use an information theoretic approach that reduces the joint entropy of scene and object variables. This leads to a significant reduction in the amount of manual labeling effort for similar or better performance when compared with a model trained with the full dataset. This is demonstrated through rigorous experimentation on three datasets.
机译:计算机愿景中的最新努力通过利用它们之间的相互关系(通常被称为上下文)来实现联合场景和对象分类以实现更高的准确性。另一方面,随着新数据可用的,还存在对识别模型的在线适应的兴趣。在本文中,我们解决了如何在线学习联合场景和对象分类的模型的问题。这种方法的主要动机是利用活动学习框架中表示作为图形模型的场景和对象之间的分层关系。要在需要由人类标记的图表上选择图表中的样本,我们使用信息理论方法,从而减少了场景和对象变量的关节熵。与用完整数据集训练的模型相比,这导致手动标签努力的量显着减少了类似或更好的性能。这是通过三个数据集的严格实验来证明。

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