Title
PolygraphMR: Enhancing the Reliability and Dependability of CNNs
Abstract
Deep neural networks (DNNs) are now starting to emerge in mission critical applications including autonomous vehicles and precision medicine. An important question is the dependability of DNNs and trustworthiness of their predictions. Considering the irreparable damage that can be caused by mispredictions, assessment of their potential misbehavior is necessary for safe deployment. In this paper, we first show the deficiency of current confidence-based methods as reliability measurement, and assess the effectiveness of traditional architecture reliability methods such as modular redundancy (MR). Then, we propose PolygraphMR and show that the combination of input preprocessing, smarter decision policies, and inclusion of prediction confidences can substantially improve the effectiveness of MR for DNNs. Next, we show how to prohibit explosive growth in the cost of MR by the help of reduced-precision designs and staged activations. Across six benchmarks, PolygraphMR detects an average of 33.5% of the baseline mispredictions with less than 2x overhead.
Year
DOI
Venue
2020
10.1109/DSN48063.2020.00029
2020 50th Annual IEEE/IFIP International Conference on Dependable Systems and Networks (DSN)
Keywords
DocType
ISSN
Reliability, Machine vision, Computer performance
Conference
1530-0889
ISBN
Citations 
PageRank 
978-1-7281-5810-5
1
0.36
References 
Authors
21
3
Name
Order
Citations
PageRank
Salar Latifi111.04
Babak Zamirai2583.64
Scott Mahlke34811312.08