Robotics and Automation in Industry 4.0

Classification of Deep Learning Techniques for Object Detection

Author(s): Aras Amruth Raj Purushotham, Manjunath Ravindra* and Chaya Ravindra

Pp: 212-228 (17)

DOI: 10.2174/9789815223491124010015

* (Excluding Mailing and Handling)

Abstract

The object detection framework recognises real-world objects within the frame of a moving photograph or computer-generated image. The object has a location to flow to through other objects, such as people or automobiles. Item detection is widely used in sectors where it is necessary for an organization's security and growth. The vast range of applications for protest detection include image recovery, security strategy, reason for inspection, machine framework assessment, and computerised vehicle structure. In contrast to conventional object localization techniques, machine learning-based object identification makes use of the machine's greater capacity to learn and represent knowledge [1]. A difficult problem in the analysis of designs and computer frameworks is object detection. Later on, the relationship between object detection, video analysis and image processing was developed. The complicated structure that is now being constructed includes both fundamental and sophisticated features, and the evaluation is carried out depending on the classifiers used. A complex system that can accurately assess and distinguish between numerous aspects is produced as a result of this combination. Several deep-level characteristics have been developed as a result of machine learning advancements to address the problems in the old design [2]. We conducted research on one-stage and two-stage object detectors, which are further categorised into deep learning methodologies. To enhance object detection, CNN networks employ these algorithms. An evaluation of the machine learning method for object detection is presented in this paper [3]. The protest site's applications have been distilled. The various methods of object localization employ template-based, region-based, and portion-based methods.

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