Susovan Kumar Pan
Assistant Professor
Faculty of CS & IT Department
Kalinga University
susovankumar.pan@kalingauniversity.ac.in
Introduction – Object detection and recognition are core challenges in computer vision, essential for enabling machines to perceive and understand the visual world. Unlike image classification, where an algorithm assigns a single label to an entire image, object detection goes further by identifying and localizing multiple objects within an image or video. Object recognition refers to the ability of an algorithm to categorise or identify the detected objects. This field has evolved significantly in recent years, powered by advancements in deep learning, particularly convolutional neural networks (CNNs).
This article delves into the key techniques, applications, and trends that define object detection and recognition.
Key Techniques in Object Detection and Recognition
Object detection and recognition are at the forefront of computer vision, enabling machines to not only “see” but also understand their surroundings. The rapid evolution of deep learning techniques like CNNs, YOLO, and SSD has greatly improved the speed and accuracy of detection systems. As new challenges like real-time processing, small object detection, and privacy concerns arise, future advancements will continue to push the boundaries of what is possible in computer vision. The diverse applications, from healthcare to autonomous driving, demonstrate the transformative potential of this technology.