PP-YOLOE: A Target Detection Model Based on PaddlePaddle

This document provides a detailed introduction to how to implement the training, evaluation, export, and prediction processes of the object detection model PP-YOLOE using PaddlePaddle, along with various deployment methods including the Inference prediction interface, ONNX interface, and prediction on Android devices. Here is a summary of each part: ### 1. Training - **Single-card training**: Use `python train.py --model_type=M --num_classes=8

Read More
Notes on "My PaddlePaddle Learning Journey" - Custom Image Dataset for Object Detection

From your notes, we can see that you have detailedly introduced the process of implementing object detection using PaddlePaddle. The following is a summary of the key points in the notes and some supplements: ### Overview of Object Detection Process 1. **Data Preprocessing**: The dataset is the Pascal VOC 2012 version, which includes a training dataset for license plate recognition. 2. **Model Training**: - Construct the VGG-16 network structure. - Define the Loss function and optimizer. 3. **Evaluation and Inference**: - Use the test

Read More
Notes on "My PaddlePaddle Learning Journey" – Implementing Object Detection Using the VOC Dataset

### Chapter 10: Implementing Object Detection with Custom Image Datasets In PaddlePaddle, we can not only quickly deploy object detection tasks using pre-trained models but also train our own specialized object detection models with custom datasets. This chapter will introduce how to perform object detection using PaddlePaddle. #### 1. Preparing the Environment Ensure that PaddlePaddle has been installed and that you are familiar with basic PaddlePaddle operations (including installation, configuration, etc.). You can check if it has been successfully installed using the following command.

Read More