Posts Tagged ‘api’

I recently started in the Fishers Youth Mentoring Initiative, and my mentee is a young man in junior high who really likes lizards. He showed me photos of them on his iPad, photos of his pet lizard, and informed me of many lizard facts. He’s also a talented sketch artist – showcasing many drawings of Pokemon, lizards and more. Oh, yeah, he’s also into computers and loves his iPad.

Part of the mentoring program is to help with school, being there as they adjust to growing up, and both respecting and encouraging their interests.

It just so happens that he had a science project coming up. He wasn’t sure what to write about. His pet lizard recently had an attitude shift, and he figured it was because it wasn’t getting as much food week over week. Changing that, he realized its attitude changed. So, he wanted to cover that somehow.

Seeing his interest in lizards, drawing, and computers I asked if we could combine them. I suggested we build an app, a “Reptile Tracker,” that would help us track reptiles, teach others about them, and show them drawings he did. He loved the idea.

Planning

We only get to meet for 30 minutes each week. So, I gave him some homework. Next time we meet, “show me what the app would look like.” He gleefully agreed.

One week later, he proudly showed me his vision for the app:

Reptile Tracker

I said “Very cool.” I’m now convinced “he’s in” on the project, and taking it seriously.

I was also surprised to learn that my expectations of “show me what it would look like” were different from what I received from someone both much younger than I and with a different world view. To him, software may simply be visualized as an icon. In my world, it’s mockups and napkin sketches. It definitely made me think about others’ perceptions!

True to software engineer and sort-of project manager form, I explained our next step was to figure out what the app would do. So, here’s our plan:

  1. Identify if there are reptiles in the photo.
  2. Tell them if it’s safe to pick it up, if it’s venomous, and so forth.
  3. Get one point for every reptile found. We’ll only support Lizards, Snakes, and Turtles in the first version.

Alright, time for the next assignment. My homework was to figure out how to do it. His homework was to draw up the Lizard, Snake, and Turtle that will be shown in the app.

Challenge accepted!

I quickly determined a couple key design and development points:

  • The icon he drew is great, but looks like a drawing on the screen. I think I’ll need to ask him to draw them on my Surface Book, so they have the right look. Looks like an opportunity for him to try Fresh Paint on my Surface Book.
  • Azure Cognitive Services, specifically their Computer Vision solution (API), will work for this task. I found a great article on the Xamarin blog by Mike James. I had to update it a bit for this article, as the calls and packages are a bit different two years later, but it definitely pointed me in the right direction.

Writing the Code

The weekend came, and I finally had time. I had been thinking about the app the remainder of the week. I woke up early Saturday and drew up a sketch of the tracking page, then went back to sleep. Later, when it was time to start the day, I headed over to Starbucks…

20181105_083756

I broke out my shiny new MacBook Pro and spun up Visual Studio Mac. Xamarin Forms was the perfect candidate for this project – cross platform, baby! I started a new Tabbed Page project, brought over some code for taking photos with the Xam.Plugin.Media plugin and resizing them, and the beta Xamarin.Essentials plugin for eventual geolocation and settings support. Hey, it’s only the first week Smile

Side Note: Normally I would use my Surface Book. This was a chance for me to seriously play with MFractor for the first time. Yay, even more learning this weekend!

Now that I had the basics in there, I created the interface for the Image Recognition Service. I wanted to be able to swap it out later if Azure didn’t cut it, so Dependency Service to the rescue! Here’s the interface:

using System.IO;
using System.Threading.Tasks;
using Microsoft.Azure.CognitiveServices.Vision.ComputerVision.Models;
 
namespace ReptileTracker.Services
{
     public interface IImageRecognitionService
     {
         string ApiKey { get; set; }
         Task<ImageAnalysis> AnalyzeImage(Stream imageStream);
     }
}

Now it was time to check out Mike’s article. It made sense, and was close to what I wanted. However, the packages he referenced were for Microsoft’s Project Oxford. In 2018, those capabilities have been rolled into Azure as Azure Cognitive Services. Once I found the updated NuGet package – Microsoft.Azure.CognitiveServices.Vision.ComputerVision – and made some code tweaks, I ended up with working code.

A few developer notes for those playing with Azure Cognitive Services:

  • Hold on to that API key, you’ll need it
  • Pay close attention to the Endpoint on the Overview page – you must provide it, otherwise you’ll get a 403 Forbidden

image

And here’s the implementation. Note the implementation must have a parameter-less constructor, otherwise Dependency Service won’t resolve it.

using Microsoft.Azure.CognitiveServices.Vision.ComputerVision;
using Microsoft.Azure.CognitiveServices.Vision.ComputerVision.Models;
using System;
using System.Collections.Generic;
using System.Diagnostics;
using System.IO;
using System.Threading.Tasks;
using ReptileTracker.Services;
using Xamarin.Forms;
 
[assembly: Dependency(typeof(ImageRecognitionService))]
namespace ReptileTracker.Services
{
    public class ImageRecognitionService : IImageRecognitionService
    {
        /// <summary>
        /// The Azure Cognitive Services Computer Vision API key.
        /// </summary>
        public string ApiKey { get; set; }
 
        /// <summary>
        /// Parameterless constructor so Dependency Service can create an instance.
        /// </summary>
        public ImageRecognitionService()
        {
 
        }
 
        /// <summary>
        /// Initializes a new instance of the <see cref="T:ReptileTracker.Services.ImageRecognitionService"/> class.
        /// </summary>
        /// <param name="apiKey">API key.</param>
        public ImageRecognitionService(string apiKey)
        {
 
            ApiKey = apiKey;
        }
 
        /// <summary>
        /// Analyzes the image.
        /// </summary>
        /// <returns>The image.</returns>
        /// <param name="imageStream">Image stream.</param>
        public async Task<ImageAnalysis> AnalyzeImage(Stream imageStream)
        {
            const string funcName = nameof(AnalyzeImage);
 
            if (string.IsNullOrWhiteSpace(ApiKey))
            {
                throw new ArgumentException("API Key must be provided.");
            }
 
            var features = new List<VisualFeatureTypes> {
                VisualFeatureTypes.Categories,
                VisualFeatureTypes.Description,
                VisualFeatureTypes.Faces,
                VisualFeatureTypes.ImageType,
                VisualFeatureTypes.Tags
            };
 
            var credentials = new ApiKeyServiceClientCredentials(ApiKey);
            var handler = new System.Net.Http.DelegatingHandler[] { };
            using (var visionClient = new ComputerVisionClient(credentials, handler))
            {
                try
                {
                    imageStream.Position = 0;
                    visionClient.Endpoint = "https://eastus.api.cognitive.microsoft.com/";
                    var result = await visionClient.AnalyzeImageInStreamAsync(imageStream, features);
                    return result;
                }
                catch (Exception ex)
                {
                    Debug.WriteLine($"{funcName}: {ex.GetBaseException().Message}");
                    return null;
                }
            }
        }
 
    }
}

And here’s how I referenced it from my content page:

pleaseWait.IsVisible = true;
pleaseWait.IsRunning = true;
var imageRecognizer = DependencyService.Get<IImageRecognitionService>();
imageRecognizer.ApiKey = AppSettings.ApiKey_Azure_ImageRecognitionService;
var details = await imageRecognizer.AnalyzeImage(new MemoryStream(ReptilePhotoBytes));
pleaseWait.IsRunning = false;
pleaseWait.IsVisible = false;

var tagsReturned = details?.Tags != null 
                   && details?.Description?.Captions != null 
                   && details.Tags.Any() 
                   && details.Description.Captions.Any();

lblTags.IsVisible = true; 
lblDescription.IsVisible = true; 

// Determine if reptiles were found. 
var reptilesToDetect = AppResources.DetectionTags.Split(','); 
var reptilesFound = details.Tags.Any(t => reptilesToDetect.Contains(t.Name.ToLower()));  

// Show animations and graphics to make things look cool, even though we already have plenty of info. 
await RotateImageAndShowSuccess(reptilesFound, "lizard", details, imgLizard);
await RotateImageAndShowSuccess(reptilesFound, "turtle", details, imgTurtle);
await RotateImageAndShowSuccess(reptilesFound, "snake", details, imgSnake);
await RotateImageAndShowSuccess(reptilesFound, "question", details, imgQuestion);

That worked like a champ, with a few gotchas:

  • I would receive a 400 Bad Request if I sent an image that was too large. 1024 x 768 worked, but 2000 x 2000 didn’t. The documentation says the image must be less than 4MB, and at least 50×50.
  • That API endpoint must be initialized. Examples don’t always make this clear. There’s no constructor that takes an endpoint address, so it’s easy to miss.
  • It can take a moment for recognition to occur. Make sure you’re using async/await so you don’t block the UI Thread!

Prettying It Up

Before I get into the results, I wanted to point out I spent significant time prettying things up. I added animations, different font sizes, better icons from The Noun Project, and more. While the image recognizer only took about an hour, the UX took a lot more. Funny how that works.

Mixed Results

So I was getting results. I added a few labels to my view to see what was coming back. Some of them were funny, others were accurate. The tags were expected, but the captions were fascinating. The captions describe the scene as the Computer Vision API sees it. I spent most of the day taking photos and seeing what was returned. Some examples:

  • My barista, Matt, was “a smiling woman working in a store”
  • My mom was “a smiling man” – she was not amused

Most of the time, as long as the subjects were clear, the scene recognition was correct:

Screenshot_20181105-080807

Or close to correct, in this shot with a turtle at Petsmart:

tmp_1541385064684

Sometimes, though, nothing useful would be returned:

Screenshot_20181105-080727

I would have thought it would have found “White Castle”. I wonder if it won’t show brand names for some reason? They do have an OCR endpoint, so maybe that would be useful in another use case.

Sometimes, even though I thought an image would “obviously” be recognized, it wasn’t:

Screenshot_20181105-081207

I’ll need to read more about how to improve accuracy, if and whether that’s even an option.

Good thing I implemented it with an interface! I could try Google’s computer vision services next.

Next Steps

We’re not done with the app yet – this week, we will discuss how to handle the scoring. I’ll post updates as we work on it. Here’s a link to the iOS beta.

Some things I’d like to try:

  • Highlight the tags in the image, by drawing over the image. I’d make this a toggle.
  • Clean up the UI to toggle “developer details”. It’s cool to show those now, but it doesn’t necessarily help the target user. I’ll ask my mentee what he thinks.

Please let me know if you have any questions by leaving a comment!

Want to learn more about Xamarin? I suggest Microsoft’s totally awesome Xamarin University. All the classes you need to get started are free.

Update 2018-11-06:

  • The tags are in two different locations – Tags and Description.Tags. Two different sets of tags are in there, so I’m now combining those lists and getting better results.
  • I found I could get color details. I’ve updated the accent color surrounding the photo. Just a nice design touch.

The built-in Facebook OWIN provider in ASP.NET MVC can open your website to the benefits of logging in via the social networking behemoth. Still, it’s limited when it comes to pulling in profile details such as photo, birthdate, gender, and so forth. I recently implemented retrieval of those profile properties, and will explain how you can do it, too! I feel the obvious benefit is your users don’t need to manually type in their profile details, should you have similar fields in your system.

I’m assuming you’ve created and configured a Facebook app via Facebook’s Dev center, and won’t be going into that process in this article.

Determine Which Profile Fields You Need

Before we write any code, you need to know to which profile details you desire access. Facebook used to be relatively open. Not anymore! Now you need to ask permission for a ton of items, and many are no longer available. Make sure you check permissions at least every 3 months, otherwise you may find your granted permissions are no longer, well, granted, or even accessible.

Here’s a link to everything you can get: https://developers.facebook.com/docs/facebook-login/permissions/

In my case, to access the Profile photo, name information, and some other basic items, I chose:

  • public_profile
  • email
  • user_photos
  • user_about_me

I probably don’t need all these right now, but I may in the future. I figured I’d ask ahead of time.

Once you have your list, continue to the fun coding part…

Enable the Facebook Provider in Startup.Auth.cs

If you haven’t already, you’ll need to enable the Facebook provider via Startup.Auth.cs. Make sure you do this *after* any cookie authentication, so “normal” username/password logins are serviced before Facebook takes over. This should already be the case, as the default ASP.NET MVC template includes the many optional providers afterwards by default.

I suggest keeping the App ID and Secret in your config file – or at least out of code – so you can swap for differing environments as necessary. The code snippet below enables Facebook authentication, and specifies the profile fields for which we’ll be asking read permission:

You don’t have to use what I chose – it’s just what I needed for my particular case. Facebook *does* change allowed permissions and profile item visibility somewhat often. Stay on top of their developer changes – otherwise your site login may unexpectedly break.

// Enable Facebook authentication with permission grant request.
// Otherwise, you just get the user's name.
var options = new FacebookAuthenticationOptions();
options.AppId = ConfigurationManager.AppSettings["Facebook.AppId"];
options.AppSecret = ConfigurationManager.AppSettings["Facebook.AppSecret"];
options.Scope.Add("public_profile");
options.Scope.Add("email");
options.Scope.Add("user_photos");
options.Scope.Add("user_about_me");
app.UseFacebookAuthentication(options);

Install the Facebook NuGet Package

In order to easily get access to the Facebook data, I used the Facebook.NET library. It’s easy enough to install:

Install-Package Facebook

Note: I used version 7.0.6 in this example. You should be able to find the latest version and changelog at https://www.nuget.org/packages/Facebook/7.0.10-beta

Handle the Facebook External Login Callback in AccountController.cs

Once Facebook has been configured, all requests from your website will direct to Facebook, where it will ask permission, and, if granted, will redirect back to the ExternalLoginCallback action in the Account controller. It is here that I suggest you retrieve the data you’ve requested from Facebook. You’ll then modify the associated ExternalLoginConfirmation View with fields to correct or remove any information from Facebook, then continue with the account creation process on your website. That’s the part where you’ll populate the ApplicationUser entity, or whatever you decided to call it.

It’s relatively simple, as shown in the code below. The steps are as follows:

  1. Get the Facebook OAuth token with a simple HttpClient call
  2. Make the request for Profile details using the Facebook.NET library
  3. Optionally, download the Profile photo and save it somewhere

Yes, I could split this out – refactor as you see fit, and feel free to share any optimizations.

Below is the change to ExternalLoginCallback to grab the data from Facebook after the redirect:

ExternalLoginCallback Code

If you’d like to get the profile image, below is an example:

GetProfileImage Code

 

Moving Forward

I hope this article has helped answer your Facebook integration questions. If you would like additional details, please post in the comments, or message me on Twitter: @Auri

Thank you!