研究目的
Investigating the use of transfer learning via Convolutional Neural Networks for multi-resolution lawn weed classification to reduce the need for large training datasets and improve recognition accuracy.
研究成果
The study demonstrates that transfer learning can effectively classify multi-resolution weed images with limited training data, achieving higher accuracy and lower computational cost compared to direct training. Future work will explore additional features for low-resolution images and 3D-CNN applications.
研究不足
The proposed method requires at least 30% of training samples for effective fine-tuning. Images with resolution less than 30 × 30 pixels do not contain enough information for accurate classification.