Hybrid approach for detection of objects from images using fisher vector and PSO based CNN

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Abstract

Owing to the near connection between object recognition and video processing and picture perception, a lot of research interest has been received in recent years. Standard methods of object detection are focused on manufactured technologies and slow-moving architectures. Fisher Vectors (FV) and Convolutional Neural Networks (CNN) are two picture arrangement pipelines with various qualities. While CNNs have indicated predominant exactness on various order assignments, FV classifiers are normally less exorbitant to prepare and assess. In this paper we propose a mechanism for detection of objects in image based on Fisher kernel and CNN with a PSO optimization technique. Here fisher kernel draws the global or statically features from the image object and CNN is used for local and more complex feature extraction from an image and here we use CNN with PSO to reduce the training complexity. Performance results shows that the proposed model is detect the object better than the existing models.

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APA

Challa, R., & Rao, K. S. (2021). Hybrid approach for detection of objects from images using fisher vector and PSO based CNN. Ingenierie Des Systemes d’Information, 26(5), 483–489. https://doi.org/10.18280/isi.260508

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