| Literature DB >> 22736972 |
Paulo J Cordeiro1, Pedro Assunção.
Abstract
Video Sensor Networks (VSNs) are recent communication infrastructures used to capture and transmit dense visual information from an application context. In such large scale environments which include video coding, transmission and display/storage, there are several open problems to overcome in practical implementations. This paper addresses the most relevant challenges posed by VSNs, namely stringent bandwidth usage and processing time/power constraints. In particular, the paper proposes a novel VSN architecture where large sets of visual sensors with embedded processors are used for compression and transmission of coded streams to gateways, which in turn transrate the incoming streams and adapt them to the variable complexity requirements of both the sensor encoders and end-user decoder terminals. Such gateways provide real-time transcoding functionalities for bandwidth adaptation and coding/decoding complexity distribution by transferring the most complex video encoding/decoding tasks to the transcoding gateway at the expense of a limited increase in bit rate. Then, a method to reduce the decoding complexity, suitable for system-on-chip implementation, is proposed to operate at the transcoding gateway whenever decoders with constrained resources are targeted. The results show that the proposed method achieves good performance and its inclusion into the VSN infrastructure provides an additional level of complexity control functionality.Entities:
Keywords: complexity control; real-time transcoding; video sensors
Year: 2012 PMID: 22736972 PMCID: PMC3376628 DOI: 10.3390/s120302693
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Typical self-organizing wireless VSN.
Figure 2.VSN Architecture.
Figure 3.(a) Low-resolution (640 × 480) camera; (b) Medium resolution (800 × 600) camera.
Figure 4.Proposed VSN architecture.
Figure 5.Transcoding gateway.
Figure 6.Computational complexity distribution in a typical H.264/AVC decoding process.
Figure 7.Rate-PSNR performance for different values of . (a) Container; (b) Foreman.
Average decoding complexity.
| Foreman | 1174.6 | 1,098.3 | 6.5% | 1057.3 | 10.0% | 974.3 | 17.1% | 867.6 | 26.1% |
| Container | 520.6 | 470.6 | 9.6% | 457.6 | 12.1% | 428 | 17.8% | 440.3 | 15.4% |