NXP Semiconductors has unveiled the i.MX 952 applications processor, a powerful addition to its i.MX 9 series designed for AI-driven automotive interiors. Equipped with NXP’s eIQ Neutron neural processing unit (NPU), this processor enables advanced in-vehicle intelligence, including driver monitoring, child presence detection, and adaptive vehicle interaction through efficient on-device machine learning.
Built to be fully compatible with existing i.MX 95 platforms, the i.MX 952 allows developers to scale automotive designs across multiple performance tiers without compromising a unified hardware and software ecosystem. By combining robust AI capabilities with flexible integration, NXP’s latest processor sets a new benchmark for next-generation automotive experiences, enhancing both safety and personalized in-cabin interactions.
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i.MX 952 Architecture and Key Features
The NXP i.MX 952 applications processor is built on a heterogeneous multi-domain architecture, combining real-time, low-power, and high-performance compute clusters to deliver advanced automotive and industrial capabilities.
The application domain is powered by a quad-core Arm Cortex-A55 complex featuring 32 kB L1 instruction/data caches, 64 kB L2 cache, and a coherent 512 kB L3 cache with ECC protection. Complementing this, an Arm Cortex-M7 core handles real-time control tasks, while an Arm Cortex-M33 core manages system safety and low-power operations. Together, these cores support ISO 26262 ASIL B and IEC 61508 SIL 2 standards for automotive and industrial safety compliance.

For AI acceleration, the i.MX 952 integrates the eIQ Neutron NPU, optimized for neural network inference, sensor fusion, image classification, and anomaly detection. Its image signal processor (ISP) supports up to 500 Mpixel/s throughput and RGB-IR camera inputs for driver and occupant monitoring. A robust multimedia subsystem includes a 4K video processing unit, MIPI-CSI/DSI interfaces, LVDS outputs, and a 3D/2D Arm Mali GPU for HMI rendering.
Memory options include support for LPDDR5 up to 6,000 MT/s or LPDDR4X up to 4,266 MT/s, both with inline ECC and encryption. Storage expansion is available via triple uSDHC (3.0) and eMMC 5.1 interfaces, along with xSPI flash with inline cryptography. Connectivity features include 2.5 Gbps and 1 Gbps Ethernet with TSN, PCIe Gen 3.0 (1 lane), dual USB 2.0 ports, and multiple UART, SPI, I2C, and CAN-FD controllers.
Understanding Sensor Fusion in Automotive Systems
Sensor fusion is the process of combining data from multiple, diverse sensors to create a more accurate and complete understanding of a vehicle’s environment and occupants. While each sensor type—such as cameras, radar, or infrared—has its own strengths, they also come with limitations. Sensor fusion engines leverage probabilistic or neural-network-based algorithms to merge these inputs, reduce uncertainty, and improve system reliability.

In interior sensing applications, sensor fusion enables precise driver attention tracking and occupant classification. Systems integrate infrared imaging with depth and motion data to monitor head orientation, eyelid movement, and body position, identifying fatigue or distraction in real-time. Exterior systems enhance ADAS capabilities, combining radar for distance measurement and cameras for object recognition. Advanced algorithms unify this data, enabling smarter decision-making and improved safety.
Implementing sensor fusion at the edge reduces latency and keeps sensitive data local, but it increases demands on the compute platform. A balanced combination of CPUs, DSP-class resources, and neural accelerators is essential to run vision and signal-processing tasks simultaneously. Accurate fusion requires precise time alignment across sensors, deterministic clocks, high-speed on-chip/off-chip links, and memory with ECC protection.
Because performance can drift due to lighting, temperature, or sensor wear, sensor fusion systems are moving toward on-device training and continual learning, allowing real-time recalibration to maintain accuracy under changing conditions.
Sized and Prepped for AI-Driven Vehicle Interiors
The i.MX 952 applications processor is available in 19 mm × 19 mm and 15 mm × 15 mm FCBGA packages, offering 0.7 mm and 0.5 mm pitch options to suit diverse automotive designs. Both package options are qualified for automotive temperature ranges from -40°C to 125°C junction, ensuring reliable performance in extreme conditions. NXP plans to release samples in the first half of 2026, with full automotive-qualified production expected shortly thereafter.
These compact, rugged packages make the i.MX 952 ideal for AI-driven vehicle interiors, enabling advanced driver monitoring, occupant sensing, and adaptive in-cabin experiences while maintaining high reliability and thermal stability.
Frequently Asked Questions
What is the NXP i.MX 952 applications processor?
The i.MX 952 is an AI-enabled processor from NXP’s i.MX 9 series, designed for automotive interiors. It integrates the eIQ Neutron NPU for driver monitoring, child presence detection, and adaptive in-cabin intelligence.
What kind of cores does the i.MX 952 include?
The processor features a quad-core Arm Cortex-A55 for applications, an Arm Cortex-M7 for real-time control, and an Arm Cortex-M33 for system safety and low-power tasks.
Does the i.MX 952 support automotive safety standards?
Yes, it supports ISO 26262 ASIL B and IEC 61508 SIL 2, making it suitable for automotive and industrial safety-critical applications.
What AI capabilities does it offer?
With the eIQ Neutron NPU, the i.MX 952 can perform neural network inference, sensor fusion, image classification, and anomaly detection directly on-device.
What types of memory and storage are supported?
It supports LPDDR5 up to 6,000 MT/s, LPDDR4X up to 4,266 MT/s, xSPI flash with inline cryptography, triple uSDHC, and eMMC 5.1 for storage expansion.
What connectivity options are available?
The processor includes 2.5 Gbps and 1 Gbps Ethernet with TSN, PCIe Gen 3.0 (1 lane), dual USB 2.0 ports, and multiple UART, SPI, I2C, and CAN-FD controllers.
Conclusion
The NXP i.MX 952 applications processor represents a major step forward in AI-driven automotive technology, combining high-performance computing, advanced neural processing, and robust safety features in a single platform. Its heterogeneous architecture, comprising multiple Arm cores and the eIQ Neutron NPU, enables real-time driver monitoring, occupant detection, and adaptive in-cabin experiences. With support for sensor fusion, edge AI, and advanced multimedia, it empowers automakers to deliver smarter, safer, and more personalized vehicle interiors.