How was this made?
First, we took the text of your happy moment:
I ate apple pie a la mode in Nantucket. There was broccoli inside, but I picked it out. I also went surfing.
Identify Entities and Syntax
- What it is:
- We take that text and run it through the Google Cloud Natural Language API. This provides a variety of natural language analysis, including the identification of entities ordered by salience (or importance) and a wide variety of parts of speech.
- What we do with it:
- We extract the "entities" and syntax to search for images. Entities are the nouns that are identified by Google's API. We are also provided syntax analysis of all the content, and from that we link verbs to nouns to make better image searches.
I ate apple pie1 a la mode3 in Nantucket4 . There was broccoli2 inside, but I picked it out. I also went surfing5 .
Entity
Salience
Entity Type
1.apple pie Other 2.broccoli Other 3.mode Other 4.Nantucket Location 5.surfing OtherWe link nouns and verbs together to return better image search results. For instance, we create the entity group "ride horse" instead of just the entity "horse". Something to keep in mind is the image search results are only as strong as the images available. In this case, we're querying Unsplash, a free, crowd-sourced database of photographs.
Determine Sentiment
- What it is:
- Sentiment analysis identifies the leading emotional opinion, which can be used to determine the attitude as positive, negative, or neutral.
- What we do with it:
- Adjust the saturation of images. Images with a more positive sentiment will be more saturated, conversely we desaturate more negative sentiment.
Sentiment Score: 0 (Neutral)
-1.0 to -0.25
-0.25 to 0.25
0.25 to 1.0
0
Categorize
- What it is:
- AutoML is an API platform provided by Google to create custom machine learning models. You simply upload data, categorize representative parts of the data, and Google will process the data and allow evaluation on any arbitrary input to match to your data labels.
- What we do with it:
- We have created a model that uses nearly 20,000 categorized happy moments taken from users online to evaluate your moment into one of the seven different categories. We have assigned Instagram-like filters to each category so that all happy moments from each category share a similar look.
This moment's category relevance
Enjoy the Moment π
46.1%
Achievement π
41%
Leisure π
12.4%
Exercise π΄ββοΈ
0.2%
Nature π²
0.1%
Bonding πͺ
0.1%
Affection π
0.1%
How Machine Learning Can Help Your Organization
This experiment is fun, but the real purpose we built it was to explore the many ways we can harness machine learning to revolutionize content creation for all kinds of content platforms. How could it help your organization?
Learn More