Abstract: As one of the core tasks in vision recognition, image classification is widely used in various scenarios. Most existing mainstream image classification models use the Convolutional Neural ...
A lightweight Python deep learning framework for precision agriculture. It leverages a CNN autoencoder to detect mixed pixels in thermal images, enabling early crop disease detection with robust ...
I deployed a super-resolution model on the Android side using TensorFlow, with a runtime of 90ms (540p ->1080p) when calling QNN. However, the preprocessing and post-processing of the images were slow ...
Abstract: Multi-label image classification is a crucial task in computer vision. To improve the classification accuracy of multiple objects within an image, many researchers attempt to construct graph ...