Learning to Transfer: Generalizable Attribute Learning with Multitask Neural Model Search

Zhi-Qi Cheng, Xiao Wu, Siyu Huang, Jun-Xiu Li, Alexander Hauptmann, Qiang Peng
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引用次数: 18

Abstract

As attribute leaning brings mid-level semantic properties for objects, it can benefit many traditional learning problems in multimedia and computer vision communities. When facing the huge number of attributes, it is extremely challenging to automatically design a generalizable neural network for other attribute learning tasks. Even for a specific attribute domain, the exploration of the neural network architecture is always optimized by a combination of heuristics and grid search, from which there is a large space of possible choices to be searched. In this paper, Generalizable Attribute Learning Model (GALM) is proposed to automatically design the neural networks for generalizable attribute learning. The main novelty of GALM is that it fully exploits the Multi-Task Learning and Reinforcement Learning to speed up the search procedure. With the help of parameter sharing, GALM is able to transfer the pre-searched architecture to different attribute domains. In experiments, we comprehensively evaluate GALM on 251 attributes from three domains: animals, objects, and scenes. Extensive experimental results demonstrate that GALM significantly outperforms the state-of-the-art attribute learning approaches and previous neural architecture search methods on two generalizable attribute learning scenarios.
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学习迁移:多任务神经模型搜索的可归纳属性学习
由于属性学习为对象提供了中级语义属性,它可以解决多媒体和计算机视觉领域的许多传统学习问题。当面对大量的属性时,自动设计一个可泛化的神经网络用于其他属性学习任务是极具挑战性的。即使对于特定的属性域,神经网络架构的探索也总是采用启发式和网格搜索相结合的方式进行优化,从中有很大的可能选择空间可供搜索。本文提出了广义属性学习模型(GALM)来自动设计用于广义属性学习的神经网络。GALM的主要新颖之处在于它充分利用了多任务学习和强化学习来加快搜索过程。在参数共享的帮助下,GALM能够将预先搜索的体系结构转移到不同的属性域。在实验中,我们对来自动物、物体和场景三个领域的251个属性进行了综合评价。大量的实验结果表明,在两种可推广的属性学习场景下,GALM显著优于最先进的属性学习方法和以前的神经结构搜索方法。
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OSMO Session details: Multimodal-2 (Cross-Modal Translation) Pseudo Transfer with Marginalized Corrupted Attribute for Zero-shot Learning Session details: System-2 (Smart Multimedia Systems) ALERT
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