Author : Harpreet Singh 1
Date of Publication :22nd February 2018
Abstract: Multiclass object recognition and classification from the video stream is active research topic in computer vision due to its wide range of application in many emerging areas such as surveillance, medical, safety, vehicle detection. Object recognition and classification task are far more challenging because of image and video data are of heavy and highly variable in nature and harsh nature of real-world recognition and classification scenarios. The processing of image and video data is required to be in real-time. The objective of this paper presents a comprehensive qualitative and quantitative comparative study of several state-of-the-art object recognition and classification methods. We have also examined merits, demerits efficiency of pioneering machine learning methods being used for object recognition and classification.
Reference :
-
- Shuji Zhao, Frédéric Precioso, Marthieu Cord, “STTK-BASED VIDEO OBJECT RECOGNITION”, in ICIP, Hong Kong, 2010.
- Mohamed Elhoseiny, Amr Bakry and Ahmad Elgammal, “MultiClass Object Classification in Video Surveillance Systems Experimental Study”, in CVPRW, 2013.
- Manish Khare, Alok Kumar Singh Kushwaha, Rajneesh Kumar Srivastava and Ashish Khare, “An Approach towards Wavelet transform based Multiclass object classification”, in IC3, pp. 365-368, 2013.
- Adi Nurhadiyatna and Arnida L. Latifah, Driszal Fryantoni, “Gabor Filtering for Feature Extraction in Real Time Vehicle Classification System”, in ISPA, 2015.
- Hongcheng Wang, Hongbo Zhou and Alan Finn, “Discriminative Dictionary Learning via Shared Latent Structure for Object Recognition and Activity Recognition”, in ICRA, 2014.
- Shiladitya Chowdhury, Aniruddha Dey, Jamuna Kanta Sing, Dipak Kumar Basu and Mita Nasipuri, “A Novel Elastic Window for Face Detection and Recognition from Video”, in CICN,2014.
- Anjan Kumar Paul and Jong Sou Park, “Multiclass Object Recognition using Smart Phone and Cloud Computing for Augmented Reality and Video Surveillance Applications ”, in ICIEV, 2013.
- Feimo Li, Xiaosong Lan, Shuxiao Li, Chengfei Zhu, Hongxing Chang, “Efficient Vehicle Detection and Orientation Estimation by Confusing Subsets Categorization”, in ICCC, 2016. 9. Tripti Meena, “Using Advanced ML for Improving Surveillance Accuracy”, in IMPETUS, 2014.
- Pramod Sharma and Ramakant Nevatia, “Multi Class Boosted Random Ferns for Adapting a Generic Object Detector to a Specific Video”, in winter conference on Application of Computer Vision, 2014.
- Manish Khare, Om Prakash, Rajneesh Kumar Srivastava and Ashish Khare, “Daubehies Complex Wavelet Transform based approach for Multiclass Object Classification”, in ICCAIS, 2014.