The Smart Sensor : A Front-End Processor For Feature Extraction Of Images

1989 ◽  
Author(s):  
Jonathan S. Kane ◽  
Dominic C. Burdick ◽  
Floyd O. Arntz ◽  
Willem Brouwer
Sensors ◽  
2020 ◽  
Vol 21 (1) ◽  
pp. 45
Author(s):  
Marcin Woźniak

The recent years have seen a vast development in various methodologies for object detection and feature extraction and recognition, both in theory and in practice [...]


2011 ◽  
Vol 293 ◽  
pp. 012020
Author(s):  
M Kavatsyuk ◽  
E Guliyev ◽  
P J J Lemmens ◽  
H Löhner ◽  
T P Poelman ◽  
...  

Author(s):  
Mohit Dua ◽  
Pawandeep Singh Sethi ◽  
Vinam Agrawal ◽  
Raghav Chawla

Introduction: An Automatic Speech Recognition (ASR) system enables to recognize the speech utterances and thus can be used to convert speech into text for various purposes. These systems are deployed in different environments such as clean or noisy and are used by all ages or types of people. These also present some of the major difficulties faced in the development of an ASR system. Thus, an ASR system need to be efficient, while also being accurate and robust. Our main goal is to minimize the error rate during training as well as testing phases, while implementing an ASR system. Performance of ASR depends upon different combinations of feature extraction techniques and back-end techniques. In this paper, using a continuous speech recognition system, the performance comparison of different combinations of feature extraction techniques and various types of back-end techniques has been presented Methods: Hidden Markov Models (HMMs), Subspace Gaussian Mixture Models (SGMMs) and Deep Neural Networks (DNNs) with DNN-HMM architecture, namely Karel's, Dan's and Hybrid DNN-SGMM architecture are used at the back-end of the implemented system. Mel frequency Cepstral Coefficient (MFCC), Perceptual Linear Prediction (PLP), and Gammatone Frequency Cepstral coefficients (GFCC) are used as feature extraction techniques at the front-end of the proposed system. Kaldi toolkit has been used for the implementation of the proposed work. The system is trained on the Texas Instruments-Massachusetts Institute of Technology (TIMIT) speech corpus for English language Results: The experimental results show that MFCC outperforms GFCC and PLP in noiseless conditions, while PLP tends to outperform MFCC and GFCC in noisy conditions. Furthermore, the hybrid of Dan's DNN implementation along with SGMM performs the best for the back-end acoustic modeling. The proposed architecture with PLP feature extraction technique in the front end and hybrid of Dan's DNN implementation along with SGMM at the back end outperforms the other combinations in a noisy environment. Conclusion: Automatic Speech recognition has numerous applications in our lives like Home automation, Personal assistant, Robotics etc. It is highly desirable to build an ASR system with good performance. The performance Automatic Speech Recognition is affected by various factors which include vocabulary size, whether system is speaker dependent or independent, whether speech is isolated, discontinuous or continuous, adverse conditions like noise. The paper presented an ensemble architecture that uses PLP for feature extraction at the front end and a hybrid of SGMM + Dan's DNN in the backend to build a noise robust ASR system Discussion: The presented work in this paper discusses the performance comparison of continuous ASR systems developed using different combinations of front-end feature extraction (MFCC, PLP, and GFCC) and back-end acoustic modeling (mono-phone, tri-phone, SGMM, DNN and hybrid DNN-SGMM) techniques. Each type of front-end technique is tested in combination with each type of back-end technique. Finally, it compares the results of the combinations thus formed, to find out the best performing combination in noisy and clean conditions


Author(s):  
Adam R. Waite ◽  
Jonathan H. Scholl ◽  
Joshua Baur ◽  
Adam Kimura ◽  
Michael Strizich ◽  
...  

Abstract This paper presents an in-depth review of the critical front end stages of the fabricated integrated circuit (IC) assurance workflow used for recovering the design stack-up of a fabricated IC. In this work, a Serial Peripheral Interface (SPI) embedded on a 130 nm static random access memory (SRAM) chip is targeted for recovering the full design stack-up. This process leverages state-of-the-art techniques for high precision material processing and image acquisition to optimize and ensure the highest accuracy in the feature extraction stage. To this end, we present metrics that can be leveraged for optimizing the front end stages of the assurance workflow. Novel imaging figures of merit (FOM) for optimizing image acquisition parameters have been developed and are presented. The Image Quality Factor (IQF) FOM was established to quantify overall image quality as it pertains to feature extraction and the Quality and Efficiency Rating (QER) FOM was demonstrated to optimize imaging parameter selection, balancing image quality and image acquisition time.


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