Object detection
Identify operationally relevant entities in live sensor streams.
Technical foundation
Tilius designs perception systems around the realities of embedded deployment: limited power envelopes, bounded memory, heterogeneous accelerators, tight latency budgets, and noisy multimodal sensor data.
Embedded AI acceleration
Tilius designs and optimises perception models for embedded CPUs, GPUs, NPUs, FPGAs, and specialised AI accelerators. The objective is not only model accuracy, but stable performance under target runtime, memory, power, and thermal constraints.
Multimodal perception
Different sensors fail in different ways. Tilius combines complementary signals to improve perception robustness across lighting, motion, range, weather, vibration, and occlusion conditions.
Efficient inference
Efficient edge inference requires coordinated model, runtime, and memory decisions. Tilius applies compression, quantisation, pruning, hardware-aware scheduling, memory-aware model design, and accelerator-specific deployment optimisation.
Real-time computer vision
Identify operationally relevant entities in live sensor streams.
Maintain temporal state for objects, agents, and regions of interest.
Pixel-level and region-level understanding for structured decisions.
Range and spatial structure estimation for robotic and inspection systems.
Interpret movement, flow, vibration, and dynamic scene behaviour.
Convert raw signals into actionable context for edge control loops.
Detect unusual events, defects, or unsafe states at the point of sensing.
Real-time inspection pipelines for manufacturing and field assets.
Edge deployment stack
Synchronised acquisition and preprocessing for heterogeneous inputs.
Compression, quantisation, pruning, and memory-aware redesign.
Target-specific scheduling across embedded CPUs, GPUs, NPUs, and FPGAs.
Low-latency execution within target power and thermal envelopes.
Operational visibility, update pathways, and performance validation.
Interfaces with client hardware, sensors, firmware, and application layers.
Typical deployment targets
Representative ranges for edge perception systems. Actual figures depend on model size, sensor count, hardware, runtime, and thermal envelope.