A leading smart clothing wearable technology brand partnered with Rishabh Software to develop a tracker app capable of real-time analysis of biosignals transmitted from e-textiles. We were engaged to facilitate near real-time transmission of biosignals received from smart clothing, allowing machine learning algorithms to predict health conditions and trigger alerts instantly. The collaboration aimed to empower users to manage stress and prevent fatal conditions through timely insights and interventions.
We developed biosignals monitoring mobile app specifically tailored to the needs of our client’s smart clothing for health monitoring. The app offers seamless access to real-time biosignals recorded from smart clothing. It enables users to actively monitor their health and take preventive or corrective actions to manage stress and mitigate the risk of fatal conditions.
The key features of the mobile app include:
Tracks physiological indicators of stress, such as skin temperature, EEG, ECG, and heart rate, to determine the optimum zone for people doing workouts. It provides users real-time data on their stress levels and notifies them about deviations.
Alongside monitoring physical activity, calorie count, and exercise performance, the app offers enhanced insights into muscle usage during workouts. Users can visualize the activation of different muscle groups in real-time and aim for more targeted and efficient workouts.
Seamlessly integrates with intelligent clothing sensors to gather biometric data and sync with the mobile app for centralized data analysis and visualization.
The mobile interface presents stress and fitness data captured from smart clothing in an actionable format. It allows users to make informed decisions about their physical and mental well-being.
We developed advanced algorithms to anticipate health pattern changes and alert users when it’s time to slow down and hydrate. It ensures optimal performance and well-being. This feature allows fitness and healthcare professionals to implement personalized interventions for better lifestyle and health outcomes.
Through the user’s personal account, seamless integration allows for adding new smart tech clothing items while providing real-time monitoring of battery status for connected garments.
To address the client’s challenges, we developed a robust backend system and used a scalable messaging framework to ensure real-time processing of biosignals from smart wearable clothing sensors. We also leveraged advanced technologies such as Java NIO, Apache Kafka, and Netty to ensure high-performance data transmission and ingestion, capable of handling massive volumes of data with minimal latency.
With a focus on reliability and scalability, we engineered a powerful backend system. It can effortlessly manage the real-time receipt of biosignals from over 10,000 devices, processing over 100GB of data per hour. Leveraging Java NIO, we ensured lightning-fast data processing, facilitating near real-time analysis of health data.
Our expertise in data science and machine learning enabled us to construct temporal features based on non-stationary, periodic systems. We developed algorithms capable of analyzing time-series data from biological systems connected to smart textiles. This solution played a crucial role in predicting health conditions and detecting stress levels in near real-time.
Our data science pipeline, powered by Apache Kafka, Spring Boot, and TensorFlow, ensured seamless data ingestion and processing workflows. We orchestrated containerization for scalability and reliability. This streamlined pipeline facilitated the development of machine-learning models for analyzing biosignals and predicting health outcomes.
Smart clothing sensors track biosignals and workout intensity for various activities like cycling, running, weightlifting, and push-ups. Live streaming from the mobile app syncs with a 3D model to show real-time muscle tension. Users can monitor muscle activity, productivity, performance, emotional state, and changes in temperature and blood flow. The app alerts users to potential training injuries and offers advice to prevent harm.
Got questions? Let's Talk
Need help? Email us