Most of the existing algorithms for zero-shot classification problems typically rely on the attribute-based semantic relations among categories to realize the classification of novel categories without observing any of their instances. However, training the zero-shot classification models still requires attribute labeling for each class (or even instance) in the training dataset, which is also expensive. To this end, in this paper, we bring up a new problem scenario: "Can we derive zero-shot learning for novel attribute detectors/classifiers and use them to automatically annotate the dataset for labeling efficiency?". Basically, given only a small set of detectors that are learned to recognize some manually annotated attributes (i.e., the seen attributes), we aim to synthesize the detectors of novel attributes in a zero-shot learning manner. Our proposed method, Zero-Shot Learning for Attributes (ZSLA), which is the first of its kind to the best of our knowledge, tackles this new research problem by applying the set operations to first decompose the seen attributes into their basic attributes and then recombine these basic attributes into the novel ones. Extensive experiments are conducted to verify the capacity of our synthesized detectors for accurately capturing the semantics of the novel attributes and show their superior performance in terms of detection and localization compared to other baseline approaches. Moreover, we demonstrate the application of automatic annotation using our synthesized detectors on Caltech-UCSD Birds-200-2011 dataset. Various generalized zero-shot classification algorithms trained upon the dataset re-annotated by ZSLA show comparable performance with those trained with the manual ground-truth annotations. Please refer to our project page for source code: https://yuhsuanli.github.io/ZSLA/
翻译:零发分类问题的现有多数算法通常依赖于基于属性的语义关系, 以便实现新分类分类的分类, 而不观察其中任何实例。 但是, 培训零发分类模式仍然需要在培训数据集中为每个类( 甚至是实例) 进行属性标签, 这也是昂贵的。 为此, 在本文件中, 我们提出了一个新的问题假设 : “ 我们能否为新型属性检测器/ 分类器进行零发式学习, 并用它们来自动说明数据分类效率? ” 。 基本上, 由于只有一组小的探测器, 才能在手动识别一些附加说明的属性( 即, 可见的属性 ) 。 但是, 培训零发分类模型模式仍然需要在培训数据集中对每个类( 甚至是实例 ) 进行属性标签标签( ZSLA ) 。 我们提出的方法, “ Zero- Shot Learning for the fest of usinal int, 解决这个新的研究问题, 将设定的操作方法首先将所见的Silvaual Silverationsal Salalalalal oralalalalalal- distration distration 。 我们用经过训练的系统测试测试的系统测试的系统, 。