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Revisiting Knowledge Transfer for Training Object Class Detectors

机译:重新审视培训对象类探测器的知识转移

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We propose to revisit knowledge transfer for training object detectors on target classes from weakly supervised training images, helped by a set of source classes with bounding-box annotations. We present a unified knowledge transfer framework based on training a single neural network multi-class object detector over all source classes, organized in a semantic hierarchy. This generates proposals with scores at multiple levels in the hierarchy, which we use to explore knowledge transfer over a broad range of generality, ranging from class-specific (bycicle to motorbike) to class-generic (objectness to any class). Experiments on the 200 object classes in the ILSVRC 2013 detection dataset show that our technique (1) leads to much better performance on the target classes (70.3% CorLoc, 36.9% mAP) than a weakly supervised baseline which uses manually engineered objectness [11] (50.5% CorLoc, 25.4% mAP). (2) delivers target object detectors reaching 80% of the mAP of their fully supervised counterparts. (3) outperforms the best reported transfer learning results on this dataset (+41% CorLoc and +3% mAP over [18, 46], +16.2% mAP over [32]). Moreover, we also carry out several across-dataset knowledge transfer experiments [27, 24, 35] and find that (4) our technique outperforms the weakly supervised baseline in all dataset pairs by 1.5 ?- - 1.9?-, establishing its general applicability.
机译:我们建议重新审视从弱监督培训图像的目标类上的训练对象探测器的知识转移,通过带有边界盒注释的一组源类帮助。我们介绍了一个统一的知识转移框架,基于在所有源类上训练单个神经网络多级对象探测器,在语义层次结构中组织。这会在层次结构中生成具有多个级别的分数的提案,我们用于探索广泛的一般性,从类特定的(Bycicle到摩托车)到类通用(对任何类的对象)来探索知识转移。在ILSVRC 2013检测数据集中的200个对象类的实验表明,我们的技术(1)对目标类(70.3%CORLOC,36.9%地图)的表现提供了更好的性能,而不是使用手动工程的对象的弱监管基线[11] (50.5%Corloc,25.4%地图)。 (2)将目标对象探测器提供达到其完全监督同行的80%的地图。 (3)优于上该数据集的最佳报告的传输学习结果(+ 41%CorLoc和超过+ 3%MAP [18,46],+ 16.2%地图上[32])。此外,我们还进行了一些跨数据集的知识转移实验[27,24,35],发现(4)我们的技术,通过1.5性能优于所有数据集对弱监督基准 - - 1.9 - ?,建立其普遍适用性。

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