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Improved Mosaic: Algorithms for more Complex Images

Hao Wang, Song Zhili

2020Journal of Physics Conference Series79 citationsDOIOpen Access PDF

Abstract

Abstract Data augmentation plays a vital role in deep learning, and image augmentation, as an important part of target detection and image classification, significantly improves the performance of the algorithm. The Mosaic data augmentation algorithm in YOLOv4 randomly selects 4 pictures from the train set and puts the contents of the 4 pictures into a synthetic picture that is directly used for training. This data augmentation method can improve the model’s recognition ability in complex backgrounds. In this paper, we improve the Mosaic data augmentation algorithm. After analyzing the synthesized picture area, it is divided into irregular grids, and a certain number of training set pictures are filled randomly, which further improves the synthesis ability and achieves a synthesis picture that can accommodate 6 and 9 training set pictures. After basic image processing methods such as zooming, flipping, and color gamut transformation, the model’s recognition ability under complex backgrounds is improved, and the accuracy of identifying small targets is improved. During the batch normalization operation, the data of 6 or 9 pictures can be calculated at the same time, which makes the model hyperparameter mini-batch need not be set very large, which reduces the GPU memory requirements.

Topics & Concepts

Computer scienceNormalization (sociology)Artificial intelligenceSet (abstract data type)Data setAlgorithmMosaicZoomGamutTransformation (genetics)Training setImage (mathematics)Pattern recognition (psychology)Computer visionProgramming languagePetroleum engineeringBiochemistryHistoryGeneChemistryArchaeologySociologyAnthropologyLens (geology)EngineeringAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsAdvanced Image and Video Retrieval Techniques
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