2022
DOI: 10.14569/ijacsa.2022.0130757
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Improved Spatial Invariance for Vehicle Platoon Application using New Pooling Method in Convolution Neural Network

Abstract: The imbalanced dataset is a prominent concern for automotive deep learning researchers. The proposed work provides a new mixed pooling strategy with enhanced performance for imbalanced vehicle dataset based on Convolution Neural Network (CNN). Pooling is crucial for improving spatial invariance, processing time, and overfitting in CNN architecture. Max and average pooling are often utilized in contemporary research articles. Both techniques of pooling have their own advantages and disadvantages.In this study, … Show more

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