MixNet: Toward Accurate Detection of Challenging Scene Text in the Wild

23 Aug 2023  ·  Yu-Xiang Zeng, Jun-Wei Hsieh, Xin Li, Ming-Ching Chang ·

Detecting small scene text instances in the wild is particularly challenging, where the influence of irregular positions and nonideal lighting often leads to detection errors. We present MixNet, a hybrid architecture that combines the strengths of CNNs and Transformers, capable of accurately detecting small text from challenging natural scenes, regardless of the orientations, styles, and lighting conditions. MixNet incorporates two key modules: (1) the Feature Shuffle Network (FSNet) to serve as the backbone and (2) the Central Transformer Block (CTBlock) to exploit the 1D manifold constraint of the scene text. We first introduce a novel feature shuffling strategy in FSNet to facilitate the exchange of features across multiple scales, generating high-resolution features superior to popular ResNet and HRNet. The FSNet backbone has achieved significant improvements over many existing text detection methods, including PAN, DB, and FAST. Then we design a complementary CTBlock to leverage center line based features similar to the medial axis of text regions and show that it can outperform contour-based approaches in challenging cases when small scene texts appear closely. Extensive experimental results show that MixNet, which mixes FSNet with CTBlock, achieves state-of-the-art results on multiple scene text detection datasets.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Scene Text Detection IC19-Art MixNet H-Mean 79.7 # 1
Scene Text Detection MSRA-TD500 MixNet Recall 88.1 # 1
Precision 90.7 # 6
F-Measure 89.4 # 1
FPS 15.2 # 8
Scene Text Detection SCUT-CTW1500 MixNet F-Measure 89.8 # 1
Precision 91.4 # 3
Recall 88.3 # 1
FPS 15.2 # 6
Scene Text Detection Total-Text MixNet F-Measure 90.5% # 1
Precision 93.0 # 1
Recall 88.1 # 1
FPS 15.2 # 9

Methods