Event Sponsorship means advertising your brand by supporting an event financially in exchange for brand exposure. Events are excellent opportunities to connect your brand with the target audience. However, just sponsoring an event is not the end - after sponsoring your brand, you need to measure the impact of your sponsorship. That’s where you analyze how many times the event advertised your brand and what the impact was. One of the crucial parts of event sponsorship is brand detection, which involves identifying and tracking a brand's logo presence within an event. You can analyze your brand's visibility against competitors, assisting companies to benchmark their performance. Manually assessing the visibility of the company's logo in event photos on its social media page is time-consuming and may not provide a comprehensive analysis of the sponsorship's reach.
Navigating the vast landscape of social media during event sponsorships can be overwhelming, but the querifai.ai Brand Detection feature makes all this easier for you. querifai.ai utilizes advanced artificial intelligence and machine learning algorithms by different vendors like Google, Clarifai, and Azure to identify and track brand presence on the images scraped from social media posts. Although many existing online tools are available for brand detection, our platform stands out! querifai.ai provides:
The sponsorship manager can scrap the images from the event’s social media page, upload them to our platform, and let our platform process them by identifying how many times each logo has appeared in their posts. Thus, our platform offers numerous advantages to the sponsorship manager.
Let’s go through a step-by-step guide demonstrating how to utilize our platform's brand detection feature. Anyone can do it!
Below are a few sample images of a famous brand like Google, sponsoring a conference event. As a sponsorship manager, you can visit the event's social media page, and download the images into a folder (For this example we have used the press-kits of Google and Microsoft). Now, the dataset is ready. So the next steps are:
Let’s discuss some interesting findings that you can observe from the results. You have to consider a few things after getting the results of brand detection.
It's challenging to declare a clear winner in accuracy among the services. Surprisingly, Google's own logo was more accurately recognized by Clarifai than Google’s service in certain cases, like on a skateboard. This lack of a consistent bias suggests that each model has its strengths and weaknesses, making it sometimes suitable and other times not. Such randomness in performance indicates the need for a broad perspective when choosing a service for brand detection.
When two or more APIs identify the same logo, the likelihood of accurate detection increases. For example, the Apple and Volkswagen logos were correctly identified by multiple services. This consensus is a robust indicator of the presence of a specific brand, providing a higher degree of confidence in the results.
A significant limitation observed is the difficulty in detecting small logos. If the logos that are too small often go unnoticed by the AI. However, this issue can be resolved using various pre-processing techniques, such as image slicing and zooming, which will significantly enhance the detection rates.
When it comes to identifying brands in images, it's important to remember that different APIs can give different results. Some do better with certain images, while others might be better with different ones. This is why using the "four eyes principle" in brand detection is quite important. This means you should always check your results with more than one source. It's best to combine the strengths of two or more APIs and blend AI's precision with human verification.
After visually inspecting the detection rates and choosing one or more services for a specific set of images, the counting can be set up fully automatically in any environment. For this, querifai offers an easy-to-access REST API. The API will provide structured access to the result, including the count, unique labels, and more.
To make a call to the API, an API access token is needed. That token can be found in the Account Security section on the User’s page. Copy the token, as you will need it later in your code.
You can call the API in any language. Below is the code for calling our API for the brand detection feature in Python.
In the dynamic field of event sponsorships, querifai.ai Brand Detection poses as a practical and time-efficient solution for sponsorship managers without complicating it. querifai.ai doesn't just make your job easier - it transforms how you approach event analysis. It's not just about data; it's about making informed decisions and maximizing your brand's impact on your sponsorships. So, are you ready to revolutionize your event sponsorships? Utilize the querifai.ai Brand Detection and watch your brand's impact. Take advantage of the power of data-driven decisions and stress-free analysis. Your brand's success is just a click away. Join querifai now and take your event sponsorships to the next level!
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