Litcius/Paper detail

ML-ANet: A Transfer Learning Approach Using Adaptation Network for Multi-label Image Classification in Autonomous Driving

Guofa Li, Zefeng Ji, Yunlong Chang, Shen Li, Xingda Qu, Dongpu Cao

2021Chinese Journal of Mechanical Engineering31 citationsDOIOpen Access PDF

Abstract

Abstract To reduce the discrepancy between the source and target domains, a new multi-label adaptation network (ML-ANet) based on multiple kernel variants with maximum mean discrepancies is proposed in this paper. The hidden representations of the task-specific layers in ML-ANet are embedded in the reproducing kernel Hilbert space (RKHS) so that the mean-embeddings of specific features in different domains could be precisely matched. Multiple kernel functions are used to improve feature distribution efficiency for explicit mean embedding matching, which can further reduce domain discrepancy. Adverse weather and cross-camera adaptation examinations are conducted to verify the effectiveness of our proposed ML-ANet. The results show that our proposed ML-ANet achieves higher accuracies than the compared state-of-the-art methods for multi-label image classification in both the adverse weather adaptation and cross-camera adaptation experiments. These results indicate that ML-ANet can alleviate the reliance on fully labeled training data and improve the accuracy of multi-label image classification in various domain shift scenarios.

Topics & Concepts

Reproducing kernel Hilbert spaceArtificial intelligenceComputer sciencePattern recognition (psychology)Transfer of learningKernel (algebra)EmbeddingImage (mathematics)Domain adaptationFeature (linguistics)Adaptation (eye)Matching (statistics)MathematicsHilbert spaceStatisticsPhysicsLinguisticsCombinatoricsMathematical analysisOpticsClassifier (UML)PhilosophyText and Document Classification TechnologiesDomain Adaptation and Few-Shot LearningAdvanced Image and Video Retrieval Techniques