Abstract
The multimedia Internet of Things system is helpful for real-time monitoring and research of vegetable growth status and related environmental variables in the greenhouse. However, dense interleaved growth of vegetables can create a blind area of multimedia sensors. Different vegetable angle views also have different characteristics. The single-angle view cannot accurately obtain the concerned status information. The traditional multimedia sensor coverage mainly focuses on making the sensing region contain as many targets as possible, but the monitoring view and quality cannot be guaranteed due to the limited view angle and visual occlusion. Based on the actual needs, this paper studies an angle coverage judgment method based on the sensor set. By analyzing the topological relationship between each target and each corresponding sensor set, a multi-objective optimization function including angle coverage and area coverage is established, which can monitor the planting region from k angles. To solve this function, this paper then designs a two-layer code solution based on the traditional tabu search algorithm framework and adopts adaptive local search to improve the global search. Experimental results show that the judgement method in this paper is more efficient than other methods. The studied algorithm can converge to the excellent solution and obtain a small node set covering the target region from multiple angles as much as possible, thus improving the monitoring quality of vegetable greenhouse.
Similar content being viewed by others
References
Ciaccheri L, Tuccio L, Mencaglia AA, Mignani AG, Hallmann E, Sikorska-Zimny K, Kaniszewski S, Verheul M̀J, Agati G (2018) Directional, versus, total reflectance spectroscopy for the, in situ, determination of lycopene in tomato fruits. J Food Compos Anal 71:65–71
Lin ZQ, Mu SM, Huang F et al (2019) A unified matrix-based convolutional neural network for fine-grained image classification of wheat leaf diseases. IEEE Access
Kang M, Wang FY (2017) From parallel plants to smart plants: intelligent control and Management for Plant Growth. IEEE/CAA Journal of Automatica Sinica 4(2):161–166
Chen JY, Yang A (2019) Intelligent agriculture and its key technologies based on internet of things architecture. IEEE Access 7:77134–77141
Jay, S., Baret, F., Dutartre, D., et al.: Exploiting the centimeter resolution of UAV multispectral imagery to improve remote-sensing estimates of canopy structure and biochemistry in sugar beet crops. Remote Sens. Environ. 231 (2019)
He SB, Shin DH, Zhang JS et al (2016) Full-view area coverage in camera sensor networks: dimension reduction and near-optimal solutions. IEEE T Veh Technol 65(9):7448–7461
Ma H, Yang M, Li D, Hong Y, Chen W (2012) Minimum camera barrier coverage in wireless camera sensor networks. In Proceedings of IEEE Conference on Compute Communications (INFOCOM)
Tseng YC, Chen PY, Chen WT (2012) The k-angle object coverage problem in a wireless sensor network. IEEE Sensors J 12(12):3408–3416
Zhu X, Li J, Zhou MC (2019) Target coverage-oriented deployment of rechargeable directional sensor networks with a Mobile charger. IEEE Internet Things 6(3):5196–5208
Kulkarni RV, Venayagamoorthy GK (2011) Particle swarm optimization in wireless-sensor networks: a brief survey. IEEE T Syst Man Cy C 41(2):262–267
Attea BA, Abbas MN, Al-Ani M et al (2019) Bio-inspired multi-objective algorithms for connected set K-covers problem in wireless sensor networks. Soft Comput 23(22):11699–11728
Al-Karaki JN, Gawanmeh A (2017) The optimal deployment, coverage, and connectivity problems in wireless sensor networks: revisited. IEEE Access 5:18051–18065
Binh HTT, Hanh NT, Quan LV et al (2020) Metaheuristics for maximization of obstacles constrained area coverage in heterogeneous wireless sensor networks. Appl. Soft Comput 86
Alia O, Al-Ajouri A (2017) Maximizing wireless sensor network coverage with minimum cost using harmony search algorithm. IEEE Sensors J 17(3):882–896
Yang C, Chin KW (2017) On nodes placement in energy harvesting wireless sensor networks for coverage and connectivity. IEEE T Ind Inform 13(1):27–36
Chen CP, Mukhopadhyay SC, Chuang CL, Lin TS, Liao MS, Wang YC, Jiang JA (2015) A hybrid memetic framework for coverage optimization in wireless sensor networks. IEEE T Cybernetics 45(10):2309–2322
Zou Y, Chakrabarty K (2004) Sensor deployment and target localization in distributed sensor networks. ACM T Embed Comput S 3(1):61–91
Mahboubi H, Aghdam AG (2017) Distributed deployment algorithms for coverage improvement in a network of wireless Mobile sensors: relocation by virtual force. IEEE T Control Netw 4(4):736–748
Li XM, Li D, Dong ZJ et al (2018) Efficient deployment of key nodes for optimal coverage of industrial mobile wireless networks. Sensors 18(2)
Wang G, Cao G, La Porta TF (2006) Movement-assisted sensor deployment. IEEE T. Mobile Comput. 5(6):640–652
Li W, Huang C, Xiao C, Han S (2018) A heading adjustment method in wireless directional sensor networks. Comput Netw 133:33–41
Vatankhah A, Babaie S (2018) An optimized bidding-based coverage improvement algorithm for hybrid wireless sensor networks. Comput Electr Eng 65:1–17
Somaieh Z, Shahram B (2018) DEHCIC: a distributed energy-aware hexagon based clustering algorithm to improve coverage in wireless sensor networks. Peer Peer Netw Appl 12:689–704
Habibi J, Mahboubi H, Aghdam AG (2017) A gradient-based coverage optimization strategy for Mobile sensor networks. IEEE T Control Netw 4(3):477–488
Jun S, Chang TW, Jeong H et al (2017) Camera placement in smart cities for maximizing weighted coverage with budget limit. IEEE Sensors J 17(23):1–1
Sumi SMS, Narayanan A, Menon V (2020) Maximizing camera coverage in multi-camera surveillance networks. IEEE Sensors J 20(17):1–1
Esmaeilzadeh R, Abbaspour M (2019) Optimum temporal coverage with rotating directional sensors. Wireless Pers Commun 105(1):369–386
Liu ZM, Ouyang ZD (2017) A learning automata-based algorithm for area coverage problem in directional sensor networks. KSII T Internet Inf 11(10):4804–4822
Lin TY, Santoso H, Wu KR et al (2017) Enhanced deployment algorithms for heterogeneous directional mobile sensors in a bounded monitoring area. IEEE T Mobile Comput 16(3):744–758
Si PJ, Wu CD, Zhang YZ et al (2019) Probabilistic coverage in directional sensor networks. Wirel Netw 25(1):355–365
Zhang GL, You S, Ren JJ et al (2016) Local coverage optimization strategy based on voronoi for directional sensor networks. Sensors 16(2)
Zhang Q, He SB, Chen JM: Toward optimal orientation scheduling for full-view coverage in camera sensor networks. 2016 IEEE Global Communications Conference (GLOBECOM)
Jia, J. L., Dong, C. L., Hong, Y., et al.: Maximizing full-view target coverage in camera sensor networks. Ad Hoc Netw. 94 (2019)
Chen JM, Liu HY, Zhang Q et al (2019) Orientation optimization for full-view coverage using rotatable camera sensors. IEEE Internet. Things. 6(6):10508–10518
Liu XL, Yang B, Chen GL (2019) Full-view barrier coverage in mobile camera sensor networks. Wirel Netw 25(8):4773–4784
Xu P, Chang IH, Chang CY, Dande B, Hsiao CY (2019) A distributed barrier coverage mechanism for supporting full view in wireless visual sensor networks. IEEE Access 7:156895–156906
Glover F (1986) Future paths for integer programming and links to artificial intelligence. Comput Oper Res 13(5):533–549
Han, Z., Li, S., Cui, C., et al. Camera planning for area surveillance: A new method for coverage inference and optimization using Location-based Service data. Computers, Environment and Urban Systems, 78 (2019)
Acknowledgments
This research was funded by the National Natural Science Foundation of China, grant number 61871041, Beijing Municipal Science and Technology Project, grant number Z191100004019007, and China Agriculture Research System of MOF and MARA, grant number CARS-23-C06.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Wu, H., Zhu, H. & Han, X. An improved k-angle coverage algorithm for multimedia wireless sensor networks based on two-layer tabu search. Peer-to-Peer Netw. Appl. 15, 28–44 (2022). https://doi.org/10.1007/s12083-021-01188-1
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12083-021-01188-1