Armand V. Feigenbaum

 

 

 

 

 

Task 1:
The prominent contributors to quality movement during the past 8 decades include the following:
• Walter Shewhart
• W. Edwards Deming
• Homer Sarasohn
• Joseph Juran
• Philip Crosby
• Armand V. Feigenbaum
• Kaoru Ishikawa
• Masaaki Imai
• Shigeo Shingo

Choose any TWO of the above mentioned scholars and describe their quality philosophies and contribution to quality movement. (CLO 1 – 10 marks)

Task 2:
Visit the website www.iso.org. Choose TWO of the ISO standard codes and write a report on them; highlighting the main features of those codes. (CLO 2 – 10 marks)

 

 

 

Sample Solution

Armand V. Feigenbaum

Armand Vallin Feigenbaum (April 6, 1920 – November 13, 2014) was an American quality control expert and businessman. He devised the concept of Total Quality Control which inspired Total Control Quality Management. Dr. Feigenbaum was instrumental in initiating the quality movements in Europe and Latin America, specifically Brazil and Argentina, in the late 1950s and early 1960s. Feigenbaum: “total quality control is a way of managing a business to serve the user. Recognizing that in order to achieve it, every part of the company needs to work in a coordinated way to accomplish that objective. Quality is a process. It is not a technical activity.” The corresponding point is, therefore, if you want to find out about quality you better not merely stay in your office and go through analyses and mental gyrations. You better go through the difficult, agonizing work of talking to the user.

sual aspects of items and less by their semantic features. Deldjoo, Elahi, Quadrana, and Cremonesi (2018) use low-level visual features extracted using the MPEG-7 standard and a deep neural network (DNN). The MPEG-7 standard extracts visual descriptors of images as color descriptors and texture descriptors. Alternatively, the authors used the activation values of inner neurons of the GoogLeNet DNN as visual features for each key frame. Whereas MPEG-7 features capture stylistic descriptors (i.e., color and texture), DNN features capture semantic content (e.g, objects, people, etc.). In this study, MPEG-7 features generated more accurate recommendations than semantic features (DNN). This could be due to the fact that while a DNN recognizes relevant semantic features (such as actors), it also recognizes non-relevant semantic features, which can create noise in the dataset.

Some studies have attempted to bridge the semantic gap by using both high-level and low-level features. For instance, Hermes and Schultz (2006) used face detection, cut detection, motion analysis, and text detection to be extracted automatically, and background information to be extracted from the Internet Movie Database (IMDb). Xu and Zhang (2013) use motion analysis, face recognition, sound volume detection, speech and music detection, and low-level features of brightness, contrast, and shot length.

2.3.2 Importance of semantic features
As this research is conducted within the context of marketing, attention has to be paid to which movie trailer features are most indicative of consumer’s willingness to see the movie. In a qualitative exploratory study on New Zealand film audiences by Finsterwalder, Kuppelwieser, and De Villiers (2012), it was found that actors are the greatest influencers on film quality expectations, and genre the most important influence on film content expectations. Moreover, consumers enjoying the music in a trailer may find the potential

This question has been answered.

Get Answer
WeCreativez WhatsApp Support
Our customer support team is here to answer your questions. Ask us anything!
👋 Hi, Welcome to Compliant Papers.