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Zero-Shot Recognition via Structured Prediction

机译:通过结构化预测零拍识别

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We develop a novel method for zero shot learning (ZSL) based on test-time adaptation of similarity functions learned using training data. Existing methods exclusively employ source-domain side information for recognizing unseen classes during test time. We show that for batch-mode applications, accuracy can be significantly improved by adapting these predictors to the observed test-time target-domain ensemble. We develop a novel structured prediction method for maximum a posteriori (MAP) estimation, where parameters account for test-time domain shift from what is predicted primarily using source domain information. We propose a Gaussian parameterization for the MAP problem and derive an efficient structure prediction algorithm. Empirically we test our method on four popular benchmark image datasets for ZSL, and show significant improvement over the state-of-the-art, on average, by 11.50% and 30.12% in terms of accuracy for recognition and mean average precision (mAP) for retrieval, respectively.
机译:我们基于使用培训数据学习的相似性功能的测试时间调整,开发一种新的零射击学习(ZSL)方法。现有方法专门使用源域侧信息,用于在测试时间内识别未经识别的类。我们表明,对于批量模式应用,可以通过将这些预测器适应观察到的测试时间目标域集合来显着改善精度。我们开发了一种新的结构化预测方法,用于最大的后验(MAP)估计,其中参数占测试时域从主要使用源域信息预测的测试时域的转换。我们为地图问题提出了高斯参数化并导出了高效的结构预测算法。经验地,我们在四个流行的基准图像数据集中测试了ZSL的四个流行基准图像数据集,并在识别和平均平均精度(MAP)的准确性方面,平均而言,在最先进的情况下显着改善11.50%和30.12%分别检索。

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