self-driving car
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Pretty much everything about making a self-driving car is difficult, but among the most difficult parts is making sure the vehicles know what pedestrians are doing — and what they’re about to do. Humanising Autonomy specializes in this, and hopes to become a ubiquitous part of people-focused computer vision systems worldwide.
The company has raised a $5.3 million seed round from an international group of investors on the strength of its AI system, which it claims outperforms humans and works on images from practically any camera you might find in a car these days.
HA’s tech is a set of machine learning modules trained to identify different pedestrian behaviors — is this person about to step into the street? Are they paying attention? Have they made eye contact with the driver? Are they on the phone? Things like that.
The company credits the robustness of its models to two main things. First, the variety of its data sources.
“Since day one we collected data from any type of source — CCTV cameras, dash cams of all resolutions, but also autonomous vehicle sensors,” said co-founder and CEO Maya Pindeus. “We’ve also built data partnerships and collaborated with different institutions, so we’ve been able to build a robust data set across different cities with different camera types, different resolutions and so on. That’s really benefited the system, so it works in nighttime, rainy Michigan situations, etc.”
Notably their models rely only on RGB data, forgoing any depth information that might come from lidar, another common sensor type. But Pindeus said that type of data isn’t by any means incompatible, it just isn’t as plentiful or relevant as real-world, visual-light footage.
In particular, HA was careful to acquire and analyze footage of accidents, because these are especially informative cases of failure of AVs or human drivers to read pedestrian intentions, or vice versa.
The second advantage Pindeus claimed is the modular nature of the models the company has created. There isn’t one single “what is that pedestrian doing” model, but a set of them that can be individually selected and tuned according to the autonomous agent’s or hardware’s needs.
“For instance, if you want to know if someone is distracted as they’re crossing the street. There’s a lot of things that we do as humans to tell if someone is distracted,” she said. “We have all these different modules that kind of come together to predict whether someone’s distracted, at risk, etc. This allows us to tune it to different environments, for instance London and Tokyo — people behave differently in different environments.”
“The other thing is processing requirements; Autonomous vehicles have a very strong GPU requirement,” she continued. “But because we build in these modules, we can adapt it to different processing requirements. Our software will run on a standard GPU when we integrate with level 4 or 5 vehicles, but then we work with aftermarket, retrofitting applications that don’t have as much power available, but the models still work with that. So we can also work across levels of automation.”
The idea is that it makes little sense to aim only for the top levels of autonomy when really there are almost no such cars on the road, and mass deployment may not happen for years. In the meantime, however, there are plenty of opportunities in the sensing stack for a system that can simply tell the driver that there’s a danger behind the car, or activate automatic emergency braking a second earlier than existing systems.
While there are lots of papers published about detecting pedestrian behavior or predicting what a person in an image is going to do, there are few companies working specifically on that task. A full-stack sensing company focusing on lidar and RGB cameras needs to complete dozens or hundreds of tasks, depending on how you define them: object characterizations and tracking, watching for signs, monitoring nearby and distant cars and so on. It may be simpler for them and for manufacturers to license HA’s functioning and highly specific solution rather than build their own or rely on more generalized object tracking.
“There are also opportunities adjacent to autonomous vehicles,” pointed out Pindeus. Warehouses and manufacturing facilities use robots and other autonomous machines that would work better if they knew what workers around them were doing. Here the modular nature of the HA system works in its favor again — retraining only the parts that need to be retrained is a smaller task than building a new system from scratch.
Currently the company is working with mobility providers in Europe, the U.S. and Japan, including Daimler Mercedes Benz and Airbus. It’s got a few case studies in the works to show how its system can help in a variety of situations, from warning vehicles and pedestrians about each other at popular pedestrian crossings to improving path planning by autonomous vehicles on the road. The system can also look over reams of past footage and produce risk assessments of an area or time of day given the number and behaviors of pedestrians there.
The $5 million seed round, led by Anthemis, with Japan’s Global Brain, Germany’s Amplifier and SV’s Synapse Partners, will mostly be dedicated to commercializing the product, Pindeus said.
“The tech is ready, now it’s about getting it into as many stacks as possible, and strengthening those tier 1 relationships,” she said.
Obviously it’s a rich field to enter, but still quite a new one. The tech may be ready to deploy, but the industry won’t stand still, so you can be sure that Humanising Autonomy will move with it.
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The enterprise software and services-focused accelerator Alchemist has raised $4 million in fresh financing from investors BASF and the Qatar Development Bank, just in time for its latest demo day unveiling 20 new companies.
Qatar and BASF join previous investors, including the venture firms Mayfield, Khosla Ventures, Foundation Capital, DFJ and USVP, and corporate investors like Cisco, Siemens and Juniper Networks.
While the roster of successes from Alchemist’s fund isn’t as lengthy as Y Combinator, the accelerator program has launched the likes of the quantum computing upstart Rigetti, the soft-launch developer tool LaunchDarkly and drone startup Matternet .
Some (personal) highlights of the latest cohort include:
Watch a live stream of Alchemist’s demo day pitches, starting at 3PM, here.
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How much does transportation cost you?
In most cities, bus or subway fare might set you back $3 or so. A tank of gas, maybe $30 or $40 depending on your car. An hour of street parking? Sometimes it’s free, sometimes it’s a few bucks. And you can usually snag an economy seat on a round-trip U.S. domestic flight for less than $300.
These numbers probably ring true for most people. There’s just one problem: Everything you know about the cost of transportation is wrong.
Despite a massive infusion of venture capital into the transportation sector over the past few years, mobility startups are starting to learn what every transportation business has known for generations: transportation profits are elusive, and the system is mainly held together by subsidies. Will this be the first generation of transportation businesses to escape history?
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Ouster has raised $60 million as the San Francisco-based lidar startup opens a new facility that will have the capacity to assemble and ship several thousand sensors a month by the end of 2019.
The new factory, which will have a grand opening ceremony March 28, currently produces hundreds of sensors per month. Ouster says at full capacity, the factory will produce $25 million to $50 million in inventory per month.
Lidar measures distance using laser light to generate highly accurate 3D maps of the world around the car. It’s considered by most in the self-driving car industry a key piece of technology required to safely deploy robotaxis and other autonomous vehicles (although not everyone agrees). However, the sensors are also useful in other industries — and this is where Ouster’s business model is targeted.
Ouster has cast a wider net for customers than some of its rivals. Unlike others vying solely for automotive customers working on the development of autonomous vehicles, Ouster is selling sensors to other industries. Ouster is selling its light detection and ranging radar sensors to robotics, drones, mapping, defense, building security, mining and agriculture companies.
The strategy has appeared to pay off. Ouster says it has 400 customers from 15 industries.
The $60 million in additional funding follows a Series A raise of $27 million announced back in 2017 as Ouster came out of stealth mode. In the years since, the company led by Angus Pacala has grown to more than 100 employees and announced four lidar sensors, with resolutions from 16 to 128 channels, and two product lines, the OS-1 and OS-2. The startup expects to nearly double its headcount in the coming year to support further product line development.
The $60 million in equity and debt funding includes investments from Runway Growth Capital and Silicon Valley Bank, as well as additional funding from Series A participants Cox Enterprises, Constellation Tech Ventures, Fontinalis Partners, Carthona and others.
Ouster said the additional investment has helped to develop Ouster’s product lines, including the launch of the OS-1 128 lidar sensor, and fund the expansion of its production facilities.
The company also announced the appointment of Susan Heystee, senior VP for OEM business at Verizon Connect, to its board of directors.
Waymo, the self-driving car company under Google’s Alphabet, could be a new competitor to the company. Waymo announced this month it will start selling its custom lidar sensors to companies outside of self-driving cars. Waymo will initially target robotics, security and agricultural technology. The sales will help the company scale its autonomous technology faster, making each sensor more affordable through economies of scale, Simon Verghese, head of Waymo’s lidar team, wrote in a Medium post at the time.
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Huawei didn’t have a new phone to show at MWC this year, so it did what any good smartphone maker would: it put the Mate 10 Pro in an autonomous car and drove it directly at a dog. Of course, the promotional video was a lot more dramatic than what the company was actually demoing at the show itself. And while the company insisted to us that the dog in the video was, indeed real and not… Read More
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Today, Google shared their self-driving car project monthly report. Good news, there were no accidents. There were however, some interesting learnings that the team shared about how they’re training their software. Apparently, Halloween was a big help: Halloween’s a great time to get some extra learning done. This week, lots of little ghouls, superheroes and even robots were… Read More
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