CVJan 8, 2020

Fast Neural Network Adaptation via Parameter Remapping and Architecture Search

arXiv:2001.02525v236 citationsHas Code
AI Analysis

This work addresses efficiency challenges in NAS for computer vision tasks like detection and segmentation, offering a more practical approach for researchers and practitioners.

The paper tackles the high computational cost of neural architecture search (NAS) for detection and segmentation by proposing a Fast Neural Network Adaptation (FNA) method that adapts both architecture and parameters from a seed network via Parameter Remapping, achieving networks that outperform existing manual and NAS designs with significantly reduced computation, such as 1737× less than DPC.

Deep neural networks achieve remarkable performance in many computer vision tasks. Most state-of-the-art (SOTA) semantic segmentation and object detection approaches reuse neural network architectures designed for image classification as the backbone, commonly pre-trained on ImageNet. However, performance gains can be achieved by designing network architectures specifically for detection and segmentation, as shown by recent neural architecture search (NAS) research for detection and segmentation. One major challenge though, is that ImageNet pre-training of the search space representation (a.k.a. super network) or the searched networks incurs huge computational cost. In this paper, we propose a Fast Neural Network Adaptation (FNA) method, which can adapt both the architecture and parameters of a seed network (e.g. a high performing manually designed backbone) to become a network with different depth, width, or kernels via a Parameter Remapping technique, making it possible to utilize NAS for detection/segmentation tasks a lot more efficiently. In our experiments, we conduct FNA on MobileNetV2 to obtain new networks for both segmentation and detection that clearly out-perform existing networks designed both manually and by NAS. The total computation cost of FNA is significantly less than SOTA segmentation/detection NAS approaches: 1737$\times$ less than DPC, 6.8$\times$ less than Auto-DeepLab and 7.4$\times$ less than DetNAS. The code is available at https://github.com/JaminFong/FNA.

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