Fig. 1 Block diagram of genetic algorithm processor
Fig. 2 LFSR-12
Fig. 3 LFSR-16
Fig. 4 Two parents (P0, P1)
Fig. 5 Two children (C0,C1) using 1-point crossover with the 5th point
Fig. 6 Two children (C0,C1) using 2-point crossover with the 3rd and 6th points
Fig. 7 Two children (C0,C1) using uniform crossover
Fig. 8 Block diagram of fitness and selection
Fig. 9 Sensor module for PnP platform
Fig. 10 Sensor identification
Fig. 11 Recognition process
Fig. 12 Timing diagram for I2C interface
Fig. 13 Block diagram for multimodal sensor platform
Fig. 14 Sensor board for the multimodal sensor platform
Fig. 15 Compensated Results for Ambient Light Sensor (TEMT6000)
Fig. 16 Firmware for multimodal sensor platform
Table 1. Simulation Results using Genetic Algorithm
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