
Prophesee is a pioneering company in neuromorphic vision systems, developing patented event-based vision sensors and AI algorithms inspired by human vision. Their Metavision® technology captures…

Prophesee is a pioneering company in neuromorphic vision systems, developing patented event-based vision sensors and AI algorithms inspired by human vision. Their Metavision® technology captures…
Core product: Event-based (neuromorphic) vision sensors and Metavision software
Founded: 2014
Headquarters: Paris, France
Notable investors: 360 Capital, Intel Capital, Xiaomi, Prosperity7 Ventures, European Investment Bank
Recent financing: Series C (€50M announced Sep 22, 2022)
Next-generation computer vision that captures dynamic scenes at very high temporal resolution and wide dynamic range while minimizing power consumption.
2014
Semiconductor Manufacturing
€50,000,000
Series C announced Sep 22, 2022; reported participation from Prosperity7 Ventures, Sinovation, Xiaomi and others
“Mix of European VC, corporate strategic investors, and public financiers including 360 Capital, Intel Capital, Robert Bosch Venture Capital, Sinovation, Xiaomi, Prosperity7 Ventures and European Investment Bank”
About PROPHESEE Prophesee is the inventor of the world’s most advanced neuromorphic vision systems. The company developed a breakthrough event-based vision approach to machine vision that enables dramatic reductions in power consumption, latency, and data processing requirements. By mimicking how the human eye and brain work, Prophesee’s patented Metavision® sensors and algorithms reveal information that is invisible to traditional frame-based sensors.
Prophesee’s technology is transforming applications across industrial automation, aerospace and defense, autonomous systems, IoT, AR/VR, and mobile.
Headquartered in Paris, Prophesee has offices in Grenoble and Shanghai.
Prophesee designs and produces a new type of cameras that are bio-inspired and thus free themselves from the concept of images. They don't gather information with a fixed \emph{frame-rate} but instead each pixel is captured asynchronously when needed. This is called \emph{event-based} image processing. Therefore the output is extremely sparse and allows a real time treatment of the information at an equivalent frequency of a kHz or more. But since the data coming from the sensor are quite different from the images used in standard vision, Prophesee is also advancing the algorithmic and machine learning side of this new kind of machine vision. It enables its clients to build new applications mainly in automotive, virtual reality and industrial automation.
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Prophesee designs and produces a new type of cameras that are bio-inspired and thus free themselves from the concept of images. They don't gather information with a fixed frame-rate but instead each pixel is captured asynchronously when needed. This is called event-based image processing. Therefore the output is extremely sparse and allows a real time treatment of the information at an equivalent frequency of a kHz or more. But since the data coming from the sensor are quite different from the images used in standard vision, Prophesee is also advancing the algorithmic and machine learning side of this new kind of machine vision. It enables its clients to build new applications mainly in automotive, virtual reality and industrial automation.
The intern will be part of the Event Signal Processing (ESP) team, whose main objective is to design algorithms close to the pixel array. Noise filtering, flicker detection and mitigation or bandwidth control are some of the ESP features already improving the data generated by the Prophesee commercialized sensors.
Intership details Topic 1: Event-based focusing in the wild Focusing event sensor is well established in conditions where the target is highly contrasted and stable. This introduces restriction in application where the object of interest is moving fast in cluttered environments. The motion aware data stream of event sensors contains unique information, such as depth, stability, occlusions, that ease the focusing of the sensor. Part of these statistics can be extracted close to the sensor in the ESP processing pipeline, and it makes sense to run the auto-focusing algorithm near the sensor to exploit the low latency of events. The purpose of this internship is to evaluate and implement a full event-based auto-focusing algorithm running next in the sensor ESP. Thanks to the unique hardware setups owned by Prophesee, this project will unlock real time experimentation of the proposed solution. The overall road-map of the internship is:
Topic 2: Event-based biasing in active light conditions The event-based sensor shines when it is synchronized with an illumination source: this lead to many application such as depth estimation, eye tracking, visual light communications, SLAM, etc. However, such applications fail in many common use cases, and this prevents the development of products based on such solution. The goal of this internship is to implement and improve some existing algorithms to robustify event-based sensors against adversarial active lighting conditions. These algorithms can be programmed inside the sensor, or next to it, which is mandatory in applications where latency is heavily constrained. The overall road-map of the internship is:
Topic 3: Event-based 2D features for drone navigation In some applications, the raw timestamp information of the event pixel is discarded, as only the spatial structure of the event is used by the algorithm. Filters were designed to extract such information inside the sensor ESP, and the output can be combined with conventional ML algorithm to enhance the full system performance. The goal of this internship is to evaluate how the in sensor filters can better use the ESP spatial filters, and how including these filters inside the training can lead to more efficient filter transfer functions. The overall road-map of the internship is:
Required Qualifications, Experience, And Skills
Education Master 1 or 2
Soft skills: Strong problem-solving skills, strong analytical skills. Flexible to dynamic environments and fast changing technologies. Passionate about technology. Team player. Good sense of autonomy. Must be pragmatic and self-motivated to complete a task even if it is outside of just the “well known” realm. “Can Do Attitude” is preferred.