CVAILGDec 17, 2020

Toward Transformer-Based Object Detection

arXiv:2012.09958v1252 citations
Originality Incremental advance
AI Analysis

This work is an incremental step towards applying transformer architectures to complex computer vision tasks like object detection, which could benefit researchers working on generalizable vision models.

This paper explores the use of Vision Transformers (ViT) as a backbone for object detection, demonstrating that a ViT-based model, ViT-FRCNN, achieves competitive results on the COCO dataset. It also shows improved performance on out-of-domain images and large objects, and reduced reliance on non-maximum suppression.

Transformers have become the dominant model in natural language processing, owing to their ability to pretrain on massive amounts of data, then transfer to smaller, more specific tasks via fine-tuning. The Vision Transformer was the first major attempt to apply a pure transformer model directly to images as input, demonstrating that as compared to convolutional networks, transformer-based architectures can achieve competitive results on benchmark classification tasks. However, the computational complexity of the attention operator means that we are limited to low-resolution inputs. For more complex tasks such as detection or segmentation, maintaining a high input resolution is crucial to ensure that models can properly identify and reflect fine details in their output. This naturally raises the question of whether or not transformer-based architectures such as the Vision Transformer are capable of performing tasks other than classification. In this paper, we determine that Vision Transformers can be used as a backbone by a common detection task head to produce competitive COCO results. The model that we propose, ViT-FRCNN, demonstrates several known properties associated with transformers, including large pretraining capacity and fast fine-tuning performance. We also investigate improvements over a standard detection backbone, including superior performance on out-of-domain images, better performance on large objects, and a lessened reliance on non-maximum suppression. We view ViT-FRCNN as an important stepping stone toward a pure-transformer solution of complex vision tasks such as object detection.

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