Exploring Self-Supervised Pretraining Datasets for Complex Scene Understanding

Yomna A. Kawashti, D. Khattab, M. Aref
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Abstract

: With the rapid advancements of deep learning research, there have been many milestones achieved in the field of computer vision. However, most of these advances are only applicable in cases where hand-annotated datasets are available. This is considered the current bottleneck of deep learning that self-supervised learning aims to overcome. The self-supervised framework consists of proxy and target tasks. The proxy task is a self-supervised task pretrained on unlabeled data, the weights of which are transferred to the target task. The prevalent paradigm in self-supervised research is to pretrain using ImageNet which is a single-object centric dataset. In this work, we investigate whether this is the best choice when the target task is multi-object centric. We pretrain “SimSiam” which is a non-contrastive self-supervised algorithm using two different pretraining datasets: ImageNet100 (single-object centric) and COCO (multi-object centric). The transfer performance of each pretrained model is evaluated on the target task of multi-label classification using PascalVOC. Furtherly, we evaluate the two pretrained models using CityScapes; an autonomous driving dataset in order to study the implications of the chosen pretraining datasets in different domains. Our results showed that the SimSiam model pretrained using COCO consistently outperformed the ImageNet100 pretrained model by ~+1 percent (57.4 vs 58.3 mAP for CityScapes). This is significant since COCO is smaller in size. We conclude that using multi-object centric datasets for pretraining self-supervised learning algorithms is more efficient in cases where the target task is multi-object centric and in complex scene understanding tasks such as autonomous driving applications.
探索复杂场景理解的自监督预训练数据集
随着深度学习研究的快速发展,计算机视觉领域取得了许多里程碑式的成就。然而,这些进步大多只适用于有手工注释数据集的情况。这被认为是当前深度学习的瓶颈,而自我监督学习的目标是克服这一瓶颈。自监督框架由代理任务和目标任务组成。代理任务是在未标记数据上进行预训练的自监督任务,其权重被转移到目标任务上。自监督研究中流行的范式是使用ImageNet进行预训练,ImageNet是一个以单对象为中心的数据集。在这项工作中,我们研究了当目标任务是多目标中心时,这是否是最佳选择。我们使用两个不同的预训练数据集:ImageNet100(单对象中心)和COCO(多对象中心)预训练“SimSiam”,这是一种非对比自监督算法。在多标签分类的目标任务上,利用PascalVOC对每个预训练模型的迁移性能进行评估。此外,我们使用cityscape对两种预训练模型进行了评估;一个自动驾驶数据集,以研究所选择的预训练数据集在不同领域的含义。我们的结果表明,使用COCO预训练的SimSiam模型始终优于ImageNet100预训练模型约+ 1% (cityscape的mAP为57.4比58.3)。这一点很重要,因为COCO的尺寸较小。我们得出的结论是,在目标任务是多目标中心的情况下,以及在自动驾驶应用等复杂的场景理解任务中,使用多目标中心数据集进行预训练自监督学习算法更有效。
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