Rethinking Channel Dimensions for Efficient Model Design

Designing an efficient model within the limited computational cost is challenging. We argue the accuracy of a lightweight model has been further limited by the design convention: a stage-wise configuration of the channel dimensions, which looks like a piecewise linear function of the network stage. In this paper, we study an effective channel dimension configuration towards better performance than the convention. To this end, we empirically study how to design a single layer properly by analyzing the rank of the output feature. We then investigate the channel configuration of a model by searching network architectures concerning the channel configuration under the computational cost restriction. Based on the investigation, we propose a simple yet effective channel configuration that can be parameterized by the layer index. As a result, our proposed model following the channel parameterization achieves remarkable performance on ImageNet classification and transfer learning tasks including COCO object detection, COCO instance segmentation, and fine-grained classifications. Code and ImageNet pretrained models are available at https://github.com/clovaai/rexnet.

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Results from the Paper


Ranked #294 on Image Classification on <h2>oi</h2> (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Image Classification <h2>oi</h2> ReXNet-R_3.0 Top 1 Accuracy 84.5% # 294
Number of params 34.8M # 662
Image Classification <h2>oi</h2> ReXNet-R_2.0 Top 1 Accuracy 83.2% # 414
Number of params 16.5M # 522
Image Classification <h2>oi</h2> ReXNet_2.0 Top 1 Accuracy 81.6% # 570
Number of params 19M # 530
GFLOPs 1.5 # 132
Image Classification <h2>oi</h2> ReXNet_1.0 Top 1 Accuracy 77.9% # 793
Number of params 4.8M # 396
GFLOPs 0.40 # 43
Image Classification <h2>oi</h2> ReXNet_0.6 Top 1 Accuracy 74.6% # 903
Number of params 2.7M # 365
Image Classification <h2>oi</h2> ReXNet_0.9 Top 1 Accuracy 77.2% # 814
Number of params 4.1M # 383
GFLOPs 0.35 # 35
Image Classification <h2>oi</h2> ReXNet_1.3 Top 1 Accuracy 79.5% # 692
Number of params 7.6M # 460
GFLOPs 0.66 # 79
Image Classification <h2>oi</h2> ReXNet_1.5 Top 1 Accuracy 80.3% # 650
Number of params 9.7M # 476
GFLOPs 0.86 # 99
Image Classification <h2>oi</h2> ReXNet_3.0 Top 1 Accuracy 82.8% # 454
Number of params 34.7M # 660
GFLOPs 3.4 # 178

Methods


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