MulticoreWare

Autonomous Mobility Software - Engineering Autonomous Embodied Intelligence

Autonomous Mobility & Intelligent Vehicles
End-to-End Autonomous Mobility Platform Enablement

Autonomous Systems - 2D & 3D Perception

We spearhead intelligent mobility solutions for emerging domains, leveraging our expertise in autonomous perception from radar, lidar and other sensors. Within the 2D realm, we specialize in 2D object detection & recognition. We prioritize precision and reliability in perception tasks, expanding our capabilities to create Birds Eye View (BEV) models using perception transformers and lane detection via Neural Networks applied to camera images. This empowers autonomous vehicles to achieve a real-time, accurate perception of their environment, facilitating secure and efficient navigation.

We empower our systems with advanced capabilities to comprehend the 3D environment, crucial for ensuring autonomous navigation and safety. Positioned at the forefront of innovation, our optimized algorithm solutions, including BEV fusion and point cloud, provide intelligent insights, propelling the advancement of autonomous mobility.

Explore more about our capabilities:

Our Expertise: Advanced Sensing Technologies ​

Our State-Of-The-Art SLAM solutions

At MulticoreWare, our dedication revolves around the formulation of algorithms and the fine-tuning of AI software to efficiently process on-board sensor data and address challenges in Computer Vision. We place a central emphasis on developing and optimizing perception algorithms based on radar technology through our Simultaneous Localization and Mapping (SLAM) solutions.These algorithms cover an extensive range of functionalities, including Multi-Object Tracking, Sensor Fusion, Radar Odometry, and more, customized for diverse applications.

Watch the video to observe the application of SLAM technology in Auto Valet parking.

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