Object Detection vs Object Recognition vs Image Segmentation Last Updated : 28 Jun, 2022 Comments Improve Suggest changes Like Article Like Report Object Recognition: Object recognition is the technique of identifying the object present in images and videos. It is one of the most important applications of machine learning and deep learning. The goal of this field is to teach machines to understand (recognize) the content of an image just like humans do. Object Recognition Object Recognition Using Machine Learning HOG (Histogram of oriented Gradients) feature Extractor and SVM (Support Vector Machine) model: Before the era of deep learning, it was a state-of-the-art method for object detection. It takes histogram descriptors of both positive ( images that contain objects) and negative (images that does not contain objects) samples and trains our SVM model on that. Bag of features model: Just like bag of words considers document as an orderless collection of words, this approach also represents an image as an orderless collection of image features. Examples of this are SIFT, MSER, etc.Viola-Jones algorithm: This algorithm is widely used for face detection in the image or real-time. It performs Haar-like feature extraction from the image. This generates a large number of features. These features are then passed into a boosting classifier. This generates a cascade of the boosted classifier to perform image detection. An image needs to pass to each of the classifiers to generate a positive (face found) result. The advantage of Viola-Jones is that it has a detection time of 2 fps which can be used in a real-time face recognition system.Object Recognition Using Deep Learning Convolution Neural Network (CNN) is one of the most popular ways of doing object recognition. It is widely used and most state-of-the-art neural networks used this method for various object recognition related tasks such as image classification. This CNN network takes an image as input and outputs the probability of the different classes. If the object present in the image then it's output probability is high else the output probability of the rest of classes is either negligible or low. The advantage of Deep learning is that we don't need to do feature extraction from data as compared to machine learning. [caption]Convolution Neural Network (CNN) is one of the most popular ways of doing object recognition. It is widely used and most state-of-the-art neural networks used this method for various object recognition related tasks such as image classification. This CNN network takes an image as input and outputs the probability of the different classes. If the object present in the image then it's output probability is high else it's output probability is eith negligible or low. The advantage of Deep learning is that we don't need to do feature extraction from data as compared to machine learning. Deep Learning vs Machine Learning[/caption] Challenges of Object Recognition: Since we take the output generated by last (fully connected) layer of the CNN model is a single class label. So, a simple CNN approach will not work if more than one class labels are present in the image.If we want to localize the presence of an object in the bounding box, we need to try a different approach that not only outputs the class label but also outputs the bounding box locations. Overview of tasks related to Object Recognition Image Classification : In Image classification, it takes an image as an input and outputs the classification label of that image with some metric (probability, loss, accuracy, etc). For Example: An image of a cat can be classified as a class label “cat” or an image of Dog can be classified as a class label “dog” with some probability. Image Classification Object Localization: This algorithm locates the presence of an object in the image and represents it with a bounding box. It takes an image as input and outputs the location of the bounding box in the form of (position, height, and width). Object Detection: Object Detection algorithms act as a combination of image classification and object localization. It takes an image as input and produces one or more bounding boxes with the class label attached to each bounding box. These algorithms are capable enough to deal with multi-class classification and localization as well as to deal with the objects with multiple occurrences. Challenges of Object Detection: In object detection, the bounding boxes are always rectangular. So, it does not help with determining the shape of objects if the object contains the curvature part.Object detection cannot accurately estimate some measurements such as the area of an object, perimeter of an object from image.Difference between classification. Localization and Detection (Source: Link) Image Segmentation: Image segmentation is a further extension of object detection in which we mark the presence of an object through pixel-wise masks generated for each object in the image. This technique is more granular than bounding box generation because this can helps us in determining the shape of each object present in the image because instead of drawing bounding boxes , segmentation helps to figure out pixels that are making that object. This granularity helps us in various fields such as medical image processing, satellite imaging, etc. There are many image segmentation approaches proposed recently. One of the most popular is Mask R-CNN proposed by K He et al. in 2017. Object Detection vs Segmentation (Source: Link) There are primarily two types of segmentation: Instance Segmentation: Multiple instances of same class are separate segments i.e. objects of same class are treated as different. Therefore, all the objects are coloured with different colour even if they belong to same class.Semantic Segmentation: All objects of same class form a single classification ,therefore , all objects of same class are coloured by same colour.Semantic vs Instance Segmentation (Source: Link) Applications: The above-discussed object recognition techniques can be utilized in many fields such as: Driver-less Cars: Object Recognition is used for detecting road signs, other vehicles, etc.Medical Image Processing: Object Recognition and Image Processing techniques can help detect disease more accurately. Image segmentation helps to detect the shape of the defect present in the body . For Example, Google AI for breast cancer detection detects more accurately than doctors. Surveillance and Security: such as Face Recognition, Object Tracking, Activity Recognition, etc. References: Ross Girshick's RCNN paperMathworks Object Recognition vs Object Detection CS231n Stanford Slides Comment More infoAdvertise with us Next Article YOLO v2 - Object Detection P pawangfg Follow Improve Article Tags : Machine Learning python Practice Tags : Machine Learningpython Similar Reads Deep Learning Tutorial Deep Learning tutorial covers the basics and more advanced topics, making it perfect for beginners and those with experience. Whether you're just starting or looking to expand your knowledge, this guide makes it easy to learn about the different technologies of Deep Learning.Deep Learning is a branc 5 min read Introduction to Deep LearningIntroduction to Deep LearningDeep Learning is transforming the way machines understand, learn and interact with complex data. 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