Hybrid and Other Techniques
Hybrid and Other Techniques
Meshlium
Meshlium is a device that uses WiFi and Bluetooth scanners to detect other devices, which can be used for a range of applications/research (e.g. Vehicle Traffic Detection).
WiFi and Bluetooth radios (of devices) periodically send out messages, containing:
- MAC address of wireless interface
- Strength of the signal (RSSI)
- Vendor of the smartphone
- WiFi Access Point and Bluetooth friendly name
- Class of Device (CoD) (only when Bluetooth)

MAC address randomization: for privacy randomized MAC address, reverts to "factory" MAC address when connected to WiFi
Adaptive Frequency Hopping (AFH): algorithm that enables Bluetooth radio to dynamically identify channels already in use and avoid them
Visual Based Indoor Localisation
- Image processing module: interpret visual data
- Object recognition in images also help to contextualise the location
- Eg: stove, fridge and sink indicate the place is likely a kitchen
- Local feature descriptors: detect local interest points in an image, describe and store them as words
- Bag-of-words model then compares the collection of word descriptors with the map (trained with places also described by bag-of-words) to match a place
- Local features do not take the overall geometry into account
- Thus pose-invariant: place is recognizable regardless of the position/orientation of the source image
- However, adding geometric information improves robustness of place matching
- Global feature descriptors: create a fingerprint of a location based on detected features
- Uses color histograms, feature detection (edges, corners, color patches)
- These features are ordered from \(0^o\) to \(360^o\) into a fingerprint, using omni-directional cameras during training phase
- Assumes the input live data is at similar height/location of the training data
- Generally, combining both local and global descriptors provides the best results
- Object recognition in images also help to contextualise the location
- Map: maintains a representation of knowledge of the world
- Usually a relational (topological/cognitive) map rather than absolute/geometric positioning
- Consists of bounded places
- Place signature: set of visual information that distinguishes it from other places
- Gateway: physical boundaries of a place, where the physical appearances changes significantly
- Methods:
- Pure image retrieval: matching based only on image similarities, no position information is required/given
- Pure topological map: stores relative positions of places, no metric information stored
- Speeds up searching as indexing is possible
- Topological-metric / Topometric map: enhance topological maps with direction and/or distance
- Appearance-based option: metric information only between places, not within places
- Sparse landmark option: metric information extracted from depth values between key landmarks inside the image
- Dense occupancy grid option: same as sparse landmark but for more feature points, more GPU/memory-intensive
- Belief generation: combines information from above components to make decision on place familiarity
- Bag-of-words model: TF-IDF scoring (term frequency - inverse document frequency)
- Each visual word in image is scored by frequency of it appearing in image, against how common the word is across all images
- Voting scheme: use multiple data streams to vote confidence of matching
- Eg: multiple color bands that give unanimous voting and confidence value > threshold
- Artifical neural network: Continuous attractor network (CAN)
- Mimic neural network of a rat hippocampus using local excitation and global inhibition layers
- Bag-of-words model: TF-IDF scoring (term frequency - inverse document frequency)
Changing Environments
- Image processing module:
- Invariant methods: focus on features that are invariant despite changing environments
- Eg: edges and corners remain prominent despite lighting changes
- This is also true for convolutional neural networks: mid-level features are robust to changes in the environment
- Alternatively, use training images that are as 'change-invariant' as possible, or pre-process live data to reduce changes
- Learning methods: define the relationship between how a place can appear across different times
- Eg: use pairs of images between two different seasons, or day and night
- Invariant methods: focus on features that are invariant despite changing environments
- Map: how to deal with different representations of the same place
- Remember and forget: Balance between new observations (that may be fleeting/inconsequential) and overwriting obsolete information
- Multiple representations of the same environment: to capture cyclic/regular changes in environment
- Eg: seasonal changes are cyclic
- Store information of the same place (or whole-map level) at different instances of the required timescale