STM32-Based IMU Attitude Estimation: Difference between revisions

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== Team Members ==
== Team Members ==
E1127488 LI DING
E1127498 FAN XUTING
111
111

Revision as of 14:56, 5 April 2025

This project involves using an STM32 microcontroller and an MPU6050 sensor module to measure angular velocity and acceleration. The collected sensor data will be processed to determine the attitude angles (roll, pitch, and yaw) of the system. The project will include sensor calibration, data filtering (e.g., complementary or Kalman filter), and real-time angle computation for accurate motion tracking applications.

Introduction

This project aims to build a simple but functional system that can estimate the orientation (attitude) of an object in real time. We used an STM32F103C8T6 microcontroller together with an MPU6050 sensor, which includes a 3-axis gyroscope and a 3-axis accelerometer.

By collecting data from the sensor and processing it through our own code, we can estimate how the object is tilted—specifically its roll, pitch, and yaw angles. To make the results more stable and accurate, we applied filtering techniques (e.g., complementary filter) to combine acceleration and gyroscope data.

The project mainly involves:

Reading raw sensor data through I2C communication

Calibrating the sensor to reduce offset and noise

Using a filtering algorithm to compute stable angle values

Updating the angles in real time

This kind of system is commonly used in applications like drones, mobile phones, and robot balance systems. Our goal is to understand how such a system works from both a hardware and software perspective by building one from scratch.

Team Members

E1127488 LI DING E1127498 FAN XUTING 111