Software Development Insights | Daffodil Software

AI in Visual Search: How it is Shaping Gen Z's Shopping Experience

Written by Rashi Chandra | Nov 4, 2024 7:00:00 AM

Gen Z’s shopping habits are driving a major shift in retail, and for tech leaders, the focus is on how to meet their expectations for speed and personalization. AI in visual search is quickly becoming the preferred tool with the majority of Gen Z favoring it over text-based searches. They want quick results, where a single photo can lead them directly to the products they’re after. AI-powered styling takes it a step further by analyzing personal preferences and delivering real-time suggestions that align with each shopper’s unique taste. These tools don’t just cater to Gen Z’s desire for instant gratification - they create new opportunities for brands to understand and engage with their audience more deeply. 


Let us explore how visual search and AI styling not only cater to Gen Z's unique preferences but also set the stage for the future of retail.

 

What is AI in Visual Search?

 

Visual product search enables users to find products by uploading an image instead of typing keywords. Using AI and machine learning in visual search, the system analyzes the image to recognize patterns, colors as well as shapes and then matches it with similar products from a retailer's catalog. It’s an effective tool to accelerate product search and make it more intuitive which gives users a new way to shop based on visuals.


Why Gen Z Prefers Visual Search Over Text Search?

 

Gen Z’s preference for visual product search over text search stems from their desire for a faster, more intuitive, and personalized shopping experience. Let’s have a closer look at the key reasons behind this trend:

  • Faster & More Intuitive Experience: Instead of going through the hassle of finding the right keyword for finding the product or navigating the menus, users can upload an image or click a picture of a product they like and the visual search engine identifies similar products instantly. This reduces the time spent on product discovery which makes it a much faster and more intuitive experience.

  • Instant Satisfaction and Convenience: AI in visual search offers instant outcomes that cater to the demand for on-the-spot gratification. Users can promptly find similar products online through visual search whether browsing social media platforms or spotting an outfit on the street. This bridges the gap between real-world inspiration and the digital shopping experience.

  • Image-Centric Preferences: Images are often preferred over text especially when it comes to exploring & engaging with products. Visual search aligns with this behavior by enabling users to rely on images rather than keywords to guide their shopping journey. This makes the process feel more natural and integrated into their daily routines of browsing image-heavy platforms like Instagram or Pinterest.

  • Seamless Social Media Integration: Visual search tools often integrate with known social media platforms that enable users to take photos or screenshots from platforms such as Instagram or YouTube and promptly find similar products. This seamless connection between content browsing and shopping facilitates an uninterrupted and fluid shopping journey.

  • Personalization Potential: AI in visual search can offer more personalized outcomes by analyzing user behavior and preferences based on their interactions with images. It can refine recommendations over time to provide tailored product suggestions that align with individual style preferences with the integration of AI & machine learning.

ALSO READ: AI Avatars in E-Commerce: Know the Benefits, Limitations Potential

 

How does AI in Visual Product Search Work?

 

1) Image uploading: 

  • Users upload an image or take a picture of any product they want to find (e.g. clothing, accessories, furniture, and places).

2) Image Processing: 

  • The system identifies the characteristics of the image such as colors, shapes, designs, and outlines. 
  • Many visual search systems use deep learning algorithms specifically CNNs to analyze images thoroughly. These models are trained on large datasets to identify & classify objects in images with precision and accuracy.

3) Comparison with the database: 

  • The system compares extracted features against a large database of images and their accompanying metadata.
  • The database includes product images along with descriptions and other relevant information.

4) Similarity Matching: 

  • The system uses algorithms to explore similar images based on extracted features.
  • Content-Based Image Retrieval (CBIR) technique seeks visually similar images based on color, shape, and texture.
  • The system also considers semantic information such as product categories along with the descriptions for the accuracy of the search results.

5) Search Results: 

  • Once similar products are identified, the system presents the user with a collection of visually similar images or products that include product listings and related information.

6) User Feedback: 

  • Some visual search engines incorporate user feedback to enhance the accuracy of future searches.

ALSO READ: The Future of Personalized Shopping: Virtual Clothes Try-On using AI

 

How Does AI Styling Make Visual Search Better?

 

AI styling plays an important role in enhancing visual product search by adding a layer of personalization and fashion intelligence to the shopping experience. When integrated with visual search tools, AI styling analyzes user preferences, behaviors, and trends to provide personalized recommendations. This approach is ideal for brands that are aiming to foster customer loyalty by ensuring their customers discover exactly what fits their style, every time they shop. Let’s explore the key features of AI styling: 

1) User Profile Analysis & Customized Recommendations: 


  • AI styling systems collect data from users such as their previous purchases, browsing history, social media engagements, and even comments on past recommendations.
  • Through the analysis of this data, AI can develop a detailed user profile that employs their style, preferences, and physical characteristics.

2) Visual Recognition: 


  • Users can upload images of clothing or outfits they like and AI can analyze these images to explore similar items available for purchase.
  • The algorithms can match products based on color, patterns and styles to ensure that the suggested products align with the user’s visual preferences.

3) Virtual Try-ons: 


  • AI styling solutions incorporate AR technology that allows users to virtually try on clothes before purchasing.
  • This feature helps users visualize how items will look on them which improves confidence in their purchasing decisions.

ALSO READ: Top 8 Image Recognition APIs in 2024

 

How Does AI Styling Meet Gen Z’s Expectations?

 

  • Personalization & Uniqueness: Gen Z values individuality & unique fashion choices. AI styling tools analyze their preferences, respective browsing behavior and past purchases to provide custom recommendations that align with their tastes to help them stand out with curated outfits.

  • Instant Gratification: With AI, Gen Z can access prompt outfit suggestions and style tips. The speed and efficiency of AI-generated suggestions align with their demand for quick solutions to reduce the necessity for extensive browsing or decision-making.

  • Interactivity and Engagement: AI styling tools often include interactive features such as virtual try-ons & real-time feedback that enable Gen Z to easily experiment with various appearances and styles. 

  • Trend Alignment: AI stays updated on the fashion trends which is important for a generation that is actively consuming trend-focused content on social media platforms. It can consistently provide updated recommendations based on what’s currently trending that keep Gen Z engaged with the latest styles.

 

How Are Brands Enhancing the Shopping Experience Through Visual Product Search?


1) H&M:

The mobile app of H&M uses visual search that lets shoppers discover similar products by uploading images from their phone gallery or snapping photos of clothing they come across in stores or online platforms. With the help of AI, the search feature swiftly matches images to H&M's catalog in seconds, without the necessity of written descriptions. The app’s AI styling tools further enhance the shopping experience by suggesting outfits based on individual tastes previous buys and current fashion trends resulting in a more personalized and convenient shopping journey for users.

 

Source: H&M

2) Amazon:

Amazon’s StyleSnap lets users upload images of outfits they come across on social media or any other platform and the AI quickly identifies similar items available for purchase on Amazon. Unlike basic image recognition tools, StyleSnap analyzes everything from color and pattern matching to fit and style, providing highly accurate suggestions. Besides helping users find products, Amazon’s AI provides styling tips to assist users recreate entire looks by proposing complementary products such as shoes, jackets or accessories, thus, offering users the complete shopping experience at one place.

 

Source: Amazon

3) Myntra:

Myntra’s visual search feature enables users to upload images of clothes or accessories they like and AI quickly finds similar items from Myntra’s vast catalog. Moreover, Myntra’s My Stylist’ feature provides customized outfit recommendations which makes it easy for users to discover complementary pieces and create complete outfits.

Source: Myntra

4) IKEA:

IKEA’s mobile app leverages AI-driven visual search features to help users easily find furniture and home decor by uploading photos or taking snapshots of items they come across in everyday life. The app swiftly matches these images with similar products from IKEA’s extensive catalog, removing the need for users to search with text descriptions. In addition, IKEA's AI-powered "Place" feature allows customers to visualize how furniture will look in their homes using augmented reality (AR). This tool enhances the shopping experience by letting users virtually place items in their living spaces, ensuring that their choices fit both style and space before making a purchase.

 

Source: IKEA

 

What Best Practices Should You Follow When Implementing AI in Visual Search for Your Business?

 

To seamlessly integrate AI-powered visual search into your business and maximize its potential, it's crucial to follow a set of best practices that address both technical and user-centric challenges. Here's how you can ensure success in your implementation:

  • Data Quality and Availability: For visual search and AI styling to be effective, high-quality and diverse datasets are essential. However, many businesses find gathering enough labeled images that accurately reflect their product range challenging. To address this issue, it's important to invest in robust data curation strategies, including data cleaning, augmentation, and diverse labeling practices. Collaborating with data providers or third-party vendors can also help you access large, comprehensive datasets encompassing various styles, colors, and contexts. This investment ensures that your AI models can generalize effectively across different scenarios. 

  • Algorithm Accuracy: Achieving high accuracy in product recognition and categorization can be tough, especially given the variations in styles, patterns, and product attributes. Misclassifications can negatively impact user experience and erode trust in your platform. To enhance recognition capabilities, consider using advanced machine learning techniques like deep learning models, which fall under the domain of computer vision. It's also crucial to regularly retrain your models with updated data to adapt to evolving trends and consumer behavior. Conducting A/B testing can help you measure performance and refine algorithms based on real-world usage. Consulting with AI experts can provide insights into best practices for algorithm optimization and accuracy enhancement.

  • User Experience: An ineffectively designed user interface can significantly impact the effectiveness of visual search and styling features, resulting in user frustration and low adoption rates. If users find the experience to be cumbersome, they may choose to abandon the feature altogether. To avoid this, prioritize intuitive UI/UX design by conducting user testing & gathering feedback throughout the development process. Simplify the search experience and ensure that the visual search feature integrates smoothly into the overall user journey. Provide clear instructions and visual cues to help users utilize the visual search functionality effectively. 

  • Integration with Existing Systems: Integrating visual search with existing e-commerce platforms can be challenging and resource-intensive, often requiring substantial technical expertise. Choose solutions that offer APIs and compatibility with your current systems to facilitate easier integration. Develop a phased implementation plan that enables incremental rollouts, reducing disruption to ongoing operations while allowing for user feedback at each stage. 

  • Cost of Implementation: The initial investment needed for technology, talent, and infrastructure can be significant, leading companies to hesitate in allocating resources without clear proof of return on investment. To address this, perform comprehensive cost-benefit analyses to assess the potential ROI from implementing visual search and AI styling features. Consider running a pilot program with a smaller selection of products to validate the technology's effectiveness before expanding its use. This strategy can help mitigate risk and showcase value to stakeholders, reinforcing the importance of investing in AI consulting to identify the most efficient pathways for implementation.

The Path Forward: Harnessing AI in Visual Search

 

AI in visual search presents a transformative opportunity for e-commerce brands to captivate Gen Z shoppers. As tech leaders, recognizing the potential of these tools to elevate user experience is essential to stand out in a rapidly evolving e-commerce landscape. By utilizing advanced algorithms and machine learning, businesses can provide customized and intuitive shopping experiences that resonate with today’s image-driven consumers. 

Brands that adopt these advancements will not just improve customer satisfaction but also foster customer loyalty among a generation that values speed, personalization, and interaction in their shopping journeys.

If you want to explore how AI in visual search can redefine your e-commerce strategy, set up a no-obligation consultation with our AI experts today!