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missing param and updated readme
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README.md
13
README.md
@ -108,19 +108,26 @@ sensor:
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- Use SSDLite models to reduce CPU usage
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## Future improvements
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- [ ] Build tensorflow from source for CPU optimizations
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- [x] Remove motion detection for now
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- [ ] Try running object detection in a thread rather than a process
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- [x] Implement min person size again
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- [ ] Switch to a config file
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- [ ] Handle multiple cameras in the same container
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- [ ] Simplify motion detection (check entire image against mask)
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- [ ] See if motion detection is even worth running
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- [ ] Scan for people across entire image rather than specfic regions
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- [ ] Dynamically resize detection area and follow people
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- [ ] Add ability to turn detection on and off via MQTT
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- [ ] MQTT motion occasionally gets stuck ON
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- [ ] Output movie clips of people for notifications, etc.
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- [ ] Integrate with homeassistant push camera
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- [ ] Merge bounding boxes that span multiple regions
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- [ ] Switch to a config file
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- [ ] Allow motion regions to be different than object detection regions
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- [ ] Implement mode to save labeled objects for training
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- [ ] Try and reduce CPU usage by simplifying the tensorflow model to just include the objects we care about
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- [ ] Look into GPU accelerated decoding of RTSP stream
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- [ ] Send video over a socket and use JSMPEG
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- [ ] Look into neural compute stick
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- [x] Look into neural compute stick
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## Building Tensorflow from source for CPU optimizations
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https://www.tensorflow.org/install/source#docker_linux_builds
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@ -29,9 +29,9 @@ MQTT_USER = os.getenv('MQTT_USER')
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MQTT_PASS = os.getenv('MQTT_PASS')
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MQTT_TOPIC_PREFIX = os.getenv('MQTT_TOPIC_PREFIX')
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REGIONS = "300,0,0,2000,200,no-mask-300.bmp:300,300,0,2000,200,no-mask-300.bmp:300,600,0,2000,200,no-mask-300.bmp:300,900,0,2000,200,no-mask-300.bmp"
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# REGIONS = "300,0,0,2000,200,no-mask-300.bmp:300,300,0,2000,200,no-mask-300.bmp:300,600,0,2000,200,no-mask-300.bmp:300,900,0,2000,200,no-mask-300.bmp:300,0,300,2000,200,no-mask-300.bmp:300,300,300,2000,200,no-mask-300.bmp:300,600,300,2000,200,no-mask-300.bmp:300,900,300,2000,200,no-mask-300.bmp"
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# REGIONS = "400,350,250,50"
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# REGIONS = os.getenv('REGIONS')
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REGIONS = os.getenv('REGIONS')
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DEBUG = (os.getenv('DEBUG') == '1')
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@ -145,7 +145,7 @@ def main():
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best_person_frame.start()
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# start a thread to parse objects from the queue
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object_parser = ObjectParser(object_queue, objects_parsed, DETECTED_OBJECTS)
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object_parser = ObjectParser(object_queue, objects_parsed, DETECTED_OBJECTS, regions)
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object_parser.start()
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# start a thread to expire objects from the detected objects list
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object_cleaner = ObjectCleaner(objects_parsed, DETECTED_OBJECTS)
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