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Launch HN: Aura Vision (YC W19) – Google Analytics for Physical Stores

88 点作者 jblok超过 6 年前
We&#x27;re Daniel, Jaime, and Jonathon - the founders of Aura Vision. (<a href="https:&#x2F;&#x2F;auravision.ai" rel="nofollow">https:&#x2F;&#x2F;auravision.ai</a>)<p>Aura Vision is like Google Analytics for physical retail stores. Our mission is to ensure that physical retailers can innovate and improve their stores with data, in the same way their eCommerce counterparts do, while protecting customer privacy.<p>Retail teams often know very little about what shoppers do in-store leading up to a purchase. To try to increase sales, they change layouts, products, and media in their shops based on anecdotal knowledge, and experience. That’s because it’s hard to get good quality data about what consumers actually do in their stores at the moment. Many retailers periodically place people in doorways with clipboards recording shopper demographics and behaviours, which of course is costly and not very scalable.<p>We use existing security cameras in stores to detect the demographics (age, gender, staff&#x2F;customer) and behaviour of all visitors using our proprietary computer vision technology. This creates an anonymised feed of aggregated data for the retailer, giving them new tools to improve their stores. E.g.<p>- To increase footfall, retailers can A&#x2F;B test window displays, selecting the one with the highest peel off rate (the ratio of entries to people walking by)<p>- To uncover why a product is underselling, retailers can learn about the movement and dwell times of different demographics around products.<p>- To increase sales, they can select products that are suited to the demographics in that store.<p>- To increase conversion rates, retailers can identify where customers spend most of their time in-store and locate staff accordingly.<p>We started out in the UK during the birth of GDPR, so we’re acutely aware of the need to protect customer privacy. Video is deleted as part of the processing, and never stored thereafter, and our system never identifies people, nor stores identities. All data is aggregated into 15 minute chunks, which fully anonymises the counts, so you are left with information on the behaviours that the camera observed in that period. Those chunks are supplied back to the retailer through our dashboard and API as heatmaps and counts. We don’t rely on facial recognition, instead taking in visual cues from all features across the body.<p>In contrast many other retail tracking solutions, like Bluetooth and WiFi, aren’t GDPR compliant as they store MAC addresses, or other phone IDs without consent, which count as personal data. This means they can re-identify you when you come back to the store, or another store on their network. While regulation will do a good job at getting rid of these tracking solutions, we want to help by showing retailers there’s an option that gives them more useful data anyway.<p>Daniel and Jaime studied under the same supervisor at the University of Southampton during their computer vision PhDs. They saw plenty of opportunities for using deep learning in people tracking. A key part of Daniel&#x27;s PhD was estimating people&#x27;s demographics from CCTV footage and this led to the end result we are running now. Myself and Daniel went to primary school together, and my background is in APIs and frontends.<p>Thanks for reading! We know the HN community has many people interested and knowledgeable in computer vision and deep learning, so we&#x27;re looking forward to hearing your thoughts. If you or someone you know has experienced similar challenges in retail, please reach out! jonathon@auravision.ai

14 条评论

nathanlee超过 6 年前
While at a major beverage brand conglomerate, I used to be interested in this kind of data.<p>We had various projects that helped us gain insights on consumers from hiring agents, observing camera footage, tracking SKU sales &amp; out-of-stocks, and use of beacons.<p>Every major FMCG company I&#x27;ve worked with already uses some tech vendor for segmented footfall model to drive placements of branded displays and promotional space.<p>We did run into real challenges conducting A&#x2F;B tests in the retail environment though. Unlike with web apps where A&#x2F;B tests are easily deployed and measured with analytics, in the retail environment, its hard to effectively measure success of A&#x2F;B tests and attribute shopper motivation. Say if an A&#x2F;B test is conducted on whether a retail display will drive sales of SKU&#x27;s we&#x27;d need to be able to attribute sales against those SKU&#x27;s. The challenge is that a FMCG company will try to place new products everywhere around the store and only on paid-for displays so it&#x27;ll be hard to assess the success. Can you also track where in the store a product was picked into a cart?<p>What I think is an interesting angle you guys have is that you integrate with existing hardware&#x2F; security cameras in stores. Solutions sold to me required us to install new cameras to gain insights on our brand&#x27;s aisles. It may help your go-to-market to partner with major security camera companies (like Avigilon <a href="http:&#x2F;&#x2F;avigilon.com&#x2F;" rel="nofollow">http:&#x2F;&#x2F;avigilon.com&#x2F;</a>) to sell your document as a part of a bundle.
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ctoth超过 6 年前
So many people talking about what a good idea this is, or how it has already been done or ...<p>Absolutely nobody talking about ... if we really, as consumers, want to be tracked everywhere all the time always.<p>Do you just assume that there&#x27;s no way to stop it so might as well nerd out over it?<p>This is ... So weird, considering how HN usually treats privacy.<p>I hope this company, and every company trying to track me both on and offline are destroyed by strong data privacy legislation.<p>Enough is enough.
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aresant超过 6 年前
There are DOZENS of companies after this space with solutions ranging from point-of-sale, to beacons (facebook was aggressively rolling into this space, have heard less after privacy missteps), to WIFI range tracking, to some combo of the above.<p>Aura is a &quot;smack self on forehead&quot; level of ingenuity &#x2F; execution - I love it, think you guys are on to something big. Look at the institutional market too - literally an analytics dashboard &#x2F; workflow that provides forward looking reporting on traffic &#x2F; trending would be hugely valuable to REIT scale funds.
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bilifuduo超过 6 年前
This is cool! There was a very similar startup, Prayas Analytics, that also went through YC (in 2015) and ended up shutting down: <a href="https:&#x2F;&#x2F;medium.com&#x2F;@pranshum&#x2F;10-lessons-on-3-years-with-prayas-31cdaf893b40" rel="nofollow">https:&#x2F;&#x2F;medium.com&#x2F;@pranshum&#x2F;10-lessons-on-3-years-with-pray...</a><p>Curious to hear your thoughts on what&#x27;s different this time around?
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plahteenlahti超过 6 年前
Your explanation on how you plan to keep the data anonymised sounds good. I also love that you’re using existing cameras, I recently observed as a large it-consultancy piloted their multi-camera solution with a large Finnish grocery store chain and got rather poor results, mainly due to cost and amount work being too high when compared to the results.<p>This also instantly reminded me of the time I used to work in large thrift shop. Everyday the owner would count the daily visitors and compare it and the daily sales number to factors such as the amount of tables, changes in floor plans, amount of new items etc. He would have loved something like this.<p>Good luck with your product!
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epberry超过 6 年前
First, the negatives. This space is enormously difficult. You have low margin, low technology clients with physical infrastructure. You have to get approval from operations, IT, and legal. Once you&#x27;re up and running the data becomes stale fast and you have to produce insights like move this shelf here. Then you have to wait for them to do that, if they ever do, and demonstrate that the client is now seeing a ROI from that change. And prove it was you and not the new ad campaign they just ran or the better staff they have in place now that is making them slightly more money. I&#x27;ve been working in this area for years, also with a computer vision research background, also read Prayas&#x27;s post several years ago and dismissed it, also started with specialty retail and focused on ease of install, also dismissed RetailNext for using their own hardware, etc.<p>Phew. Now, the positives! I do believe that someone will crack this at some point. There are several promising trends including a massive jump in the share of IP camera installs, massive drop in the price&#x2F;performance ratio of GPUs, and steady increase in commercial broadband. And everybody loves data. Those trends, plus a pivot to optimizing physical business processes, are why I&#x27;m still working on camera software at my company, Perceive (www.perceiveinc.com). We got an interview at YC several years ago for this idea but were rejected.<p>So Jonathon and team, despite how this post started, I really do wish you guys the best. Your tech looks really good. I would love to talk.
musicale超过 6 年前
&quot;Our mission is to ensure that physical retailers can innovate and improve their stores with data, in the same way their eCommerce counterparts do, while protecting customer privacy.&quot;<p>Unfortunately &quot;the same way their eCommerce counterparts do&quot; is by violating customer privacy.<p>The only reliable way to protect customer privacy is simply to not collect the video and other data in the first place.
conanbatt超过 6 年前
I gotta be honest, this doesn&#x27;t look to great to me. Most stores, mid-to-low grocery stores, dont even track inventory completely automatically, let alone something as sophisticated at this.<p>How are you going to beat amazon that has expertise and actual stores to try this? Where is the tech break-through going to happen without that instantaneous feedback loop?<p>But going back to the first point..have you talked to target stores? I can&#x27;t imagine them wanting to sign up on something that has very undefined value, potentially large backlash. They have much bigger problems on their day to day.
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yc-kraln超过 6 年前
I joined a company with exactly this pitch in 2012. In 2016, I acquired a company with this pitch as part of a major international Telco. I have built a prototype of this technology and run a pilot with a major international conference venue.<p>The stores aren&#x27;t interested in your aggregated data, and they wouldn&#x27;t know how to use it even if they were. They&#x27;re interested in insights which you can&#x27;t have, because you don&#x27;t know their business. You&#x27;re not delivering enough value to make a business. Sorry.
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mlevental超过 6 年前
the real value to be captured isn&#x27;t footfall and such because the real efficiency of e-commerce isn&#x27;t a-b t testing; it&#x27;s retargeting. Amazon go and their competitors are solving this problem <a href="https:&#x2F;&#x2F;m.youtube.com&#x2F;watch?v=yeS8TJwBAFs" rel="nofollow">https:&#x2F;&#x2F;m.youtube.com&#x2F;watch?v=yeS8TJwBAFs</a>. I&#x27;m sure you&#x27;re aiming at the same thing though.
neuralRiot超过 6 年前
Time to go back to my neighborhood grocery store where when i need some product he doesn&#x27;t carry i talk to him and he will have it a few days later. I used to love technology and that&#x27;s why i choose this field but now i feel it asphyxiating and that makes me sad, perhaps i&#x27;m just getting old.
nurgasemetey超过 6 年前
There is also one company called V-Count(<a href="https:&#x2F;&#x2F;v-count.com&#x2F;" rel="nofollow">https:&#x2F;&#x2F;v-count.com&#x2F;</a>)
kayhi超过 6 年前
Pricing?
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n_plus_one超过 6 年前
How do you process the video? On prem in a box or through the cloud? How do you deal with bandwidth concerns of retailers?